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5.2 - writing hypotheses.

The first step in conducting a hypothesis test is to write the hypothesis statements that are going to be tested. For each test you will have a null hypothesis (\(H_0\)) and an alternative hypothesis (\(H_a\)).

When writing hypotheses there are three things that we need to know: (1) the parameter that we are testing (2) the direction of the test (non-directional, right-tailed or left-tailed), and (3) the value of the hypothesized parameter.

  • At this point we can write hypotheses for a single mean (\(\mu\)), paired means(\(\mu_d\)), a single proportion (\(p\)), the difference between two independent means (\(\mu_1-\mu_2\)), the difference between two proportions (\(p_1-p_2\)), a simple linear regression slope (\(\beta\)), and a correlation (\(\rho\)). 
  • The research question will give us the information necessary to determine if the test is two-tailed (e.g., "different from," "not equal to"), right-tailed (e.g., "greater than," "more than"), or left-tailed (e.g., "less than," "fewer than").
  • The research question will also give us the hypothesized parameter value. This is the number that goes in the hypothesis statements (i.e., \(\mu_0\) and \(p_0\)). For the difference between two groups, regression, and correlation, this value is typically 0.

Hypotheses are always written in terms of population parameters (e.g., \(p\) and \(\mu\)).  The tables below display all of the possible hypotheses for the parameters that we have learned thus far. Note that the null hypothesis always includes the equality (i.e., =).

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How to Write a Strong Hypothesis | Guide & Examples

Published on 6 May 2022 by Shona McCombes .

A hypothesis is a statement that can be tested by scientific research. If you want to test a relationship between two or more variables, you need to write hypotheses before you start your experiment or data collection.

Table of contents

What is a hypothesis, developing a hypothesis (with example), hypothesis examples, frequently asked questions about writing hypotheses.

A hypothesis states your predictions about what your research will find. It is a tentative answer to your research question that has not yet been tested. For some research projects, you might have to write several hypotheses that address different aspects of your research question.

A hypothesis is not just a guess – it should be based on existing theories and knowledge. It also has to be testable, which means you can support or refute it through scientific research methods (such as experiments, observations, and statistical analysis of data).

Variables in hypotheses

Hypotheses propose a relationship between two or more variables . An independent variable is something the researcher changes or controls. A dependent variable is something the researcher observes and measures.

In this example, the independent variable is exposure to the sun – the assumed cause . The dependent variable is the level of happiness – the assumed effect .

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Step 1: ask a question.

Writing a hypothesis begins with a research question that you want to answer. The question should be focused, specific, and researchable within the constraints of your project.

Step 2: Do some preliminary research

Your initial answer to the question should be based on what is already known about the topic. Look for theories and previous studies to help you form educated assumptions about what your research will find.

At this stage, you might construct a conceptual framework to identify which variables you will study and what you think the relationships are between them. Sometimes, you’ll have to operationalise more complex constructs.

Step 3: Formulate your hypothesis

Now you should have some idea of what you expect to find. Write your initial answer to the question in a clear, concise sentence.

Step 4: Refine your hypothesis

You need to make sure your hypothesis is specific and testable. There are various ways of phrasing a hypothesis, but all the terms you use should have clear definitions, and the hypothesis should contain:

  • The relevant variables
  • The specific group being studied
  • The predicted outcome of the experiment or analysis

Step 5: Phrase your hypothesis in three ways

To identify the variables, you can write a simple prediction in if … then form. The first part of the sentence states the independent variable and the second part states the dependent variable.

In academic research, hypotheses are more commonly phrased in terms of correlations or effects, where you directly state the predicted relationship between variables.

If you are comparing two groups, the hypothesis can state what difference you expect to find between them.

Step 6. Write a null hypothesis

If your research involves statistical hypothesis testing , you will also have to write a null hypothesis. The null hypothesis is the default position that there is no association between the variables. The null hypothesis is written as H 0 , while the alternative hypothesis is H 1 or H a .

Hypothesis testing is a formal procedure for investigating our ideas about the world using statistics. It is used by scientists to test specific predictions, called hypotheses , by calculating how likely it is that a pattern or relationship between variables could have arisen by chance.

A hypothesis is not just a guess. It should be based on existing theories and knowledge. It also has to be testable, which means you can support or refute it through scientific research methods (such as experiments, observations, and statistical analysis of data).

A research hypothesis is your proposed answer to your research question. The research hypothesis usually includes an explanation (‘ x affects y because …’).

A statistical hypothesis, on the other hand, is a mathematical statement about a population parameter. Statistical hypotheses always come in pairs: the null and alternative hypotheses. In a well-designed study , the statistical hypotheses correspond logically to the research hypothesis.

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9.1: Introduction to Hypothesis Testing

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Basic Theory

Preliminaries.

As usual, our starting point is a random experiment with an underlying sample space and a probability measure \(\P\). In the basic statistical model, we have an observable random variable \(\bs{X}\) taking values in a set \(S\). In general, \(\bs{X}\) can have quite a complicated structure. For example, if the experiment is to sample \(n\) objects from a population and record various measurements of interest, then \[ \bs{X} = (X_1, X_2, \ldots, X_n) \] where \(X_i\) is the vector of measurements for the \(i\)th object. The most important special case occurs when \((X_1, X_2, \ldots, X_n)\) are independent and identically distributed. In this case, we have a random sample of size \(n\) from the common distribution.

The purpose of this section is to define and discuss the basic concepts of statistical hypothesis testing . Collectively, these concepts are sometimes referred to as the Neyman-Pearson framework, in honor of Jerzy Neyman and Egon Pearson, who first formalized them.

A statistical hypothesis is a statement about the distribution of \(\bs{X}\). Equivalently, a statistical hypothesis specifies a set of possible distributions of \(\bs{X}\): the set of distributions for which the statement is true. A hypothesis that specifies a single distribution for \(\bs{X}\) is called simple ; a hypothesis that specifies more than one distribution for \(\bs{X}\) is called composite .

In hypothesis testing , the goal is to see if there is sufficient statistical evidence to reject a presumed null hypothesis in favor of a conjectured alternative hypothesis . The null hypothesis is usually denoted \(H_0\) while the alternative hypothesis is usually denoted \(H_1\).

An hypothesis test is a statistical decision ; the conclusion will either be to reject the null hypothesis in favor of the alternative, or to fail to reject the null hypothesis. The decision that we make must, of course, be based on the observed value \(\bs{x}\) of the data vector \(\bs{X}\). Thus, we will find an appropriate subset \(R\) of the sample space \(S\) and reject \(H_0\) if and only if \(\bs{x} \in R\). The set \(R\) is known as the rejection region or the critical region . Note the asymmetry between the null and alternative hypotheses. This asymmetry is due to the fact that we assume the null hypothesis, in a sense, and then see if there is sufficient evidence in \(\bs{x}\) to overturn this assumption in favor of the alternative.

An hypothesis test is a statistical analogy to proof by contradiction, in a sense. Suppose for a moment that \(H_1\) is a statement in a mathematical theory and that \(H_0\) is its negation. One way that we can prove \(H_1\) is to assume \(H_0\) and work our way logically to a contradiction. In an hypothesis test, we don't prove anything of course, but there are similarities. We assume \(H_0\) and then see if the data \(\bs{x}\) are sufficiently at odds with that assumption that we feel justified in rejecting \(H_0\) in favor of \(H_1\).

Often, the critical region is defined in terms of a statistic \(w(\bs{X})\), known as a test statistic , where \(w\) is a function from \(S\) into another set \(T\). We find an appropriate rejection region \(R_T \subseteq T\) and reject \(H_0\) when the observed value \(w(\bs{x}) \in R_T\). Thus, the rejection region in \(S\) is then \(R = w^{-1}(R_T) = \left\{\bs{x} \in S: w(\bs{x}) \in R_T\right\}\). As usual, the use of a statistic often allows significant data reduction when the dimension of the test statistic is much smaller than the dimension of the data vector.

The ultimate decision may be correct or may be in error. There are two types of errors, depending on which of the hypotheses is actually true.

Types of errors:

  • A type 1 error is rejecting the null hypothesis \(H_0\) when \(H_0\) is true.
  • A type 2 error is failing to reject the null hypothesis \(H_0\) when the alternative hypothesis \(H_1\) is true.

Similarly, there are two ways to make a correct decision: we could reject \(H_0\) when \(H_1\) is true or we could fail to reject \(H_0\) when \(H_0\) is true. The possibilities are summarized in the following table:

Of course, when we observe \(\bs{X} = \bs{x}\) and make our decision, either we will have made the correct decision or we will have committed an error, and usually we will never know which of these events has occurred. Prior to gathering the data, however, we can consider the probabilities of the various errors.

If \(H_0\) is true (that is, the distribution of \(\bs{X}\) is specified by \(H_0\)), then \(\P(\bs{X} \in R)\) is the probability of a type 1 error for this distribution. If \(H_0\) is composite, then \(H_0\) specifies a variety of different distributions for \(\bs{X}\) and thus there is a set of type 1 error probabilities.

The maximum probability of a type 1 error, over the set of distributions specified by \( H_0 \), is the significance level of the test or the size of the critical region.

The significance level is often denoted by \(\alpha\). Usually, the rejection region is constructed so that the significance level is a prescribed, small value (typically 0.1, 0.05, 0.01).

If \(H_1\) is true (that is, the distribution of \(\bs{X}\) is specified by \(H_1\)), then \(\P(\bs{X} \notin R)\) is the probability of a type 2 error for this distribution. Again, if \(H_1\) is composite then \(H_1\) specifies a variety of different distributions for \(\bs{X}\), and thus there will be a set of type 2 error probabilities. Generally, there is a tradeoff between the type 1 and type 2 error probabilities. If we reduce the probability of a type 1 error, by making the rejection region \(R\) smaller, we necessarily increase the probability of a type 2 error because the complementary region \(S \setminus R\) is larger.

The extreme cases can give us some insight. First consider the decision rule in which we never reject \(H_0\), regardless of the evidence \(\bs{x}\). This corresponds to the rejection region \(R = \emptyset\). A type 1 error is impossible, so the significance level is 0. On the other hand, the probability of a type 2 error is 1 for any distribution defined by \(H_1\). At the other extreme, consider the decision rule in which we always rejects \(H_0\) regardless of the evidence \(\bs{x}\). This corresponds to the rejection region \(R = S\). A type 2 error is impossible, but now the probability of a type 1 error is 1 for any distribution defined by \(H_0\). In between these two worthless tests are meaningful tests that take the evidence \(\bs{x}\) into account.

If \(H_1\) is true, so that the distribution of \(\bs{X}\) is specified by \(H_1\), then \(\P(\bs{X} \in R)\), the probability of rejecting \(H_0\) is the power of the test for that distribution.

Thus the power of the test for a distribution specified by \( H_1 \) is the probability of making the correct decision.

Suppose that we have two tests, corresponding to rejection regions \(R_1\) and \(R_2\), respectively, each having significance level \(\alpha\). The test with region \(R_1\) is uniformly more powerful than the test with region \(R_2\) if \[ \P(\bs{X} \in R_1) \ge \P(\bs{X} \in R_2) \text{ for every distribution of } \bs{X} \text{ specified by } H_1 \]

Naturally, in this case, we would prefer the first test. Often, however, two tests will not be uniformly ordered; one test will be more powerful for some distributions specified by \(H_1\) while the other test will be more powerful for other distributions specified by \(H_1\).

If a test has significance level \(\alpha\) and is uniformly more powerful than any other test with significance level \(\alpha\), then the test is said to be a uniformly most powerful test at level \(\alpha\).

Clearly a uniformly most powerful test is the best we can do.

\(P\)-value

In most cases, we have a general procedure that allows us to construct a test (that is, a rejection region \(R_\alpha\)) for any given significance level \(\alpha \in (0, 1)\). Typically, \(R_\alpha\) decreases (in the subset sense) as \(\alpha\) decreases.

The \(P\)-value of the observed value \(\bs{x}\) of \(\bs{X}\), denoted \(P(\bs{x})\), is defined to be the smallest \(\alpha\) for which \(\bs{x} \in R_\alpha\); that is, the smallest significance level for which \(H_0\) is rejected, given \(\bs{X} = \bs{x}\).

Knowing \(P(\bs{x})\) allows us to test \(H_0\) at any significance level for the given data \(\bs{x}\): If \(P(\bs{x}) \le \alpha\) then we would reject \(H_0\) at significance level \(\alpha\); if \(P(\bs{x}) \gt \alpha\) then we fail to reject \(H_0\) at significance level \(\alpha\). Note that \(P(\bs{X})\) is a statistic . Informally, \(P(\bs{x})\) can often be thought of as the probability of an outcome as or more extreme than the observed value \(\bs{x}\), where extreme is interpreted relative to the null hypothesis \(H_0\).

Analogy with Justice Systems

There is a helpful analogy between statistical hypothesis testing and the criminal justice system in the US and various other countries. Consider a person charged with a crime. The presumed null hypothesis is that the person is innocent of the crime; the conjectured alternative hypothesis is that the person is guilty of the crime. The test of the hypotheses is a trial with evidence presented by both sides playing the role of the data. After considering the evidence, the jury delivers the decision as either not guilty or guilty . Note that innocent is not a possible verdict of the jury, because it is not the point of the trial to prove the person innocent. Rather, the point of the trial is to see whether there is sufficient evidence to overturn the null hypothesis that the person is innocent in favor of the alternative hypothesis of that the person is guilty. A type 1 error is convicting a person who is innocent; a type 2 error is acquitting a person who is guilty. Generally, a type 1 error is considered the more serious of the two possible errors, so in an attempt to hold the chance of a type 1 error to a very low level, the standard for conviction in serious criminal cases is beyond a reasonable doubt .

Tests of an Unknown Parameter

Hypothesis testing is a very general concept, but an important special class occurs when the distribution of the data variable \(\bs{X}\) depends on a parameter \(\theta\) taking values in a parameter space \(\Theta\). The parameter may be vector-valued, so that \(\bs{\theta} = (\theta_1, \theta_2, \ldots, \theta_n)\) and \(\Theta \subseteq \R^k\) for some \(k \in \N_+\). The hypotheses generally take the form \[ H_0: \theta \in \Theta_0 \text{ versus } H_1: \theta \notin \Theta_0 \] where \(\Theta_0\) is a prescribed subset of the parameter space \(\Theta\). In this setting, the probabilities of making an error or a correct decision depend on the true value of \(\theta\). If \(R\) is the rejection region, then the power function \( Q \) is given by \[ Q(\theta) = \P_\theta(\bs{X} \in R), \quad \theta \in \Theta \] The power function gives a lot of information about the test.

The power function satisfies the following properties:

  • \(Q(\theta)\) is the probability of a type 1 error when \(\theta \in \Theta_0\).
  • \(\max\left\{Q(\theta): \theta \in \Theta_0\right\}\) is the significance level of the test.
  • \(1 - Q(\theta)\) is the probability of a type 2 error when \(\theta \notin \Theta_0\).
  • \(Q(\theta)\) is the power of the test when \(\theta \notin \Theta_0\).

If we have two tests, we can compare them by means of their power functions.

Suppose that we have two tests, corresponding to rejection regions \(R_1\) and \(R_2\), respectively, each having significance level \(\alpha\). The test with rejection region \(R_1\) is uniformly more powerful than the test with rejection region \(R_2\) if \( Q_1(\theta) \ge Q_2(\theta)\) for all \( \theta \notin \Theta_0 \).

Most hypothesis tests of an unknown real parameter \(\theta\) fall into three special cases:

Suppose that \( \theta \) is a real parameter and \( \theta_0 \in \Theta \) a specified value. The tests below are respectively the two-sided test , the left-tailed test , and the right-tailed test .

  • \(H_0: \theta = \theta_0\) versus \(H_1: \theta \ne \theta_0\)
  • \(H_0: \theta \ge \theta_0\) versus \(H_1: \theta \lt \theta_0\)
  • \(H_0: \theta \le \theta_0\) versus \(H_1: \theta \gt \theta_0\)

Thus the tests are named after the conjectured alternative. Of course, there may be other unknown parameters besides \(\theta\) (known as nuisance parameters ).

Equivalence Between Hypothesis Test and Confidence Sets

There is an equivalence between hypothesis tests and confidence sets for a parameter \(\theta\).

Suppose that \(C(\bs{x})\) is a \(1 - \alpha\) level confidence set for \(\theta\). The following test has significance level \(\alpha\) for the hypothesis \( H_0: \theta = \theta_0 \) versus \( H_1: \theta \ne \theta_0 \): Reject \(H_0\) if and only if \(\theta_0 \notin C(\bs{x})\)

By definition, \(\P[\theta \in C(\bs{X})] = 1 - \alpha\). Hence if \(H_0\) is true so that \(\theta = \theta_0\), then the probability of a type 1 error is \(P[\theta \notin C(\bs{X})] = \alpha\).

Equivalently, we fail to reject \(H_0\) at significance level \(\alpha\) if and only if \(\theta_0\) is in the corresponding \(1 - \alpha\) level confidence set. In particular, this equivalence applies to interval estimates of a real parameter \(\theta\) and the common tests for \(\theta\) given above .

In each case below, the confidence interval has confidence level \(1 - \alpha\) and the test has significance level \(\alpha\).

  • Suppose that \(\left[L(\bs{X}, U(\bs{X})\right]\) is a two-sided confidence interval for \(\theta\). Reject \(H_0: \theta = \theta_0\) versus \(H_1: \theta \ne \theta_0\) if and only if \(\theta_0 \lt L(\bs{X})\) or \(\theta_0 \gt U(\bs{X})\).
  • Suppose that \(L(\bs{X})\) is a confidence lower bound for \(\theta\). Reject \(H_0: \theta \le \theta_0\) versus \(H_1: \theta \gt \theta_0\) if and only if \(\theta_0 \lt L(\bs{X})\).
  • Suppose that \(U(\bs{X})\) is a confidence upper bound for \(\theta\). Reject \(H_0: \theta \ge \theta_0\) versus \(H_1: \theta \lt \theta_0\) if and only if \(\theta_0 \gt U(\bs{X})\).

Pivot Variables and Test Statistics

Recall that confidence sets of an unknown parameter \(\theta\) are often constructed through a pivot variable , that is, a random variable \(W(\bs{X}, \theta)\) that depends on the data vector \(\bs{X}\) and the parameter \(\theta\), but whose distribution does not depend on \(\theta\) and is known. In this case, a natural test statistic for the basic tests given above is \(W(\bs{X}, \theta_0)\).

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What is and How to Write a Good Hypothesis in Research?

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One of the most important aspects of conducting research is constructing a strong hypothesis. But what makes a hypothesis in research effective? In this article, we’ll look at the difference between a hypothesis and a research question, as well as the elements of a good hypothesis in research. We’ll also include some examples of effective hypotheses, and what pitfalls to avoid.

What is a Hypothesis in Research?

Simply put, a hypothesis is a research question that also includes the predicted or expected result of the research. Without a hypothesis, there can be no basis for a scientific or research experiment. As such, it is critical that you carefully construct your hypothesis by being deliberate and thorough, even before you set pen to paper. Unless your hypothesis is clearly and carefully constructed, any flaw can have an adverse, and even grave, effect on the quality of your experiment and its subsequent results.

Research Question vs Hypothesis

It’s easy to confuse research questions with hypotheses, and vice versa. While they’re both critical to the Scientific Method, they have very specific differences. Primarily, a research question, just like a hypothesis, is focused and concise. But a hypothesis includes a prediction based on the proposed research, and is designed to forecast the relationship of and between two (or more) variables. Research questions are open-ended, and invite debate and discussion, while hypotheses are closed, e.g. “The relationship between A and B will be C.”

A hypothesis is generally used if your research topic is fairly well established, and you are relatively certain about the relationship between the variables that will be presented in your research. Since a hypothesis is ideally suited for experimental studies, it will, by its very existence, affect the design of your experiment. The research question is typically used for new topics that have not yet been researched extensively. Here, the relationship between different variables is less known. There is no prediction made, but there may be variables explored. The research question can be casual in nature, simply trying to understand if a relationship even exists, descriptive or comparative.

How to Write Hypothesis in Research

Writing an effective hypothesis starts before you even begin to type. Like any task, preparation is key, so you start first by conducting research yourself, and reading all you can about the topic that you plan to research. From there, you’ll gain the knowledge you need to understand where your focus within the topic will lie.

Remember that a hypothesis is a prediction of the relationship that exists between two or more variables. Your job is to write a hypothesis, and design the research, to “prove” whether or not your prediction is correct. A common pitfall is to use judgments that are subjective and inappropriate for the construction of a hypothesis. It’s important to keep the focus and language of your hypothesis objective.

An effective hypothesis in research is clearly and concisely written, and any terms or definitions clarified and defined. Specific language must also be used to avoid any generalities or assumptions.

Use the following points as a checklist to evaluate the effectiveness of your research hypothesis:

  • Predicts the relationship and outcome
  • Simple and concise – avoid wordiness
  • Clear with no ambiguity or assumptions about the readers’ knowledge
  • Observable and testable results
  • Relevant and specific to the research question or problem

Research Hypothesis Example

Perhaps the best way to evaluate whether or not your hypothesis is effective is to compare it to those of your colleagues in the field. There is no need to reinvent the wheel when it comes to writing a powerful research hypothesis. As you’re reading and preparing your hypothesis, you’ll also read other hypotheses. These can help guide you on what works, and what doesn’t, when it comes to writing a strong research hypothesis.

Here are a few generic examples to get you started.

Eating an apple each day, after the age of 60, will result in a reduction of frequency of physician visits.

Budget airlines are more likely to receive more customer complaints. A budget airline is defined as an airline that offers lower fares and fewer amenities than a traditional full-service airline. (Note that the term “budget airline” is included in the hypothesis.

Workplaces that offer flexible working hours report higher levels of employee job satisfaction than workplaces with fixed hours.

Each of the above examples are specific, observable and measurable, and the statement of prediction can be verified or shown to be false by utilizing standard experimental practices. It should be noted, however, that often your hypothesis will change as your research progresses.

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  • Indian J Crit Care Med
  • v.23(Suppl 3); 2019 Sep

An Introduction to Statistics: Understanding Hypothesis Testing and Statistical Errors

Priya ranganathan.

1 Department of Anesthesiology, Critical Care and Pain, Tata Memorial Hospital, Mumbai, Maharashtra, India

2 Department of Surgical Oncology, Tata Memorial Centre, Mumbai, Maharashtra, India

The second article in this series on biostatistics covers the concepts of sample, population, research hypotheses and statistical errors.

How to cite this article

Ranganathan P, Pramesh CS. An Introduction to Statistics: Understanding Hypothesis Testing and Statistical Errors. Indian J Crit Care Med 2019;23(Suppl 3):S230–S231.

Two papers quoted in this issue of the Indian Journal of Critical Care Medicine report. The results of studies aim to prove that a new intervention is better than (superior to) an existing treatment. In the ABLE study, the investigators wanted to show that transfusion of fresh red blood cells would be superior to standard-issue red cells in reducing 90-day mortality in ICU patients. 1 The PROPPR study was designed to prove that transfusion of a lower ratio of plasma and platelets to red cells would be superior to a higher ratio in decreasing 24-hour and 30-day mortality in critically ill patients. 2 These studies are known as superiority studies (as opposed to noninferiority or equivalence studies which will be discussed in a subsequent article).

SAMPLE VERSUS POPULATION

A sample represents a group of participants selected from the entire population. Since studies cannot be carried out on entire populations, researchers choose samples, which are representative of the population. This is similar to walking into a grocery store and examining a few grains of rice or wheat before purchasing an entire bag; we assume that the few grains that we select (the sample) are representative of the entire sack of grains (the population).

The results of the study are then extrapolated to generate inferences about the population. We do this using a process known as hypothesis testing. This means that the results of the study may not always be identical to the results we would expect to find in the population; i.e., there is the possibility that the study results may be erroneous.

HYPOTHESIS TESTING

A clinical trial begins with an assumption or belief, and then proceeds to either prove or disprove this assumption. In statistical terms, this belief or assumption is known as a hypothesis. Counterintuitively, what the researcher believes in (or is trying to prove) is called the “alternate” hypothesis, and the opposite is called the “null” hypothesis; every study has a null hypothesis and an alternate hypothesis. For superiority studies, the alternate hypothesis states that one treatment (usually the new or experimental treatment) is superior to the other; the null hypothesis states that there is no difference between the treatments (the treatments are equal). For example, in the ABLE study, we start by stating the null hypothesis—there is no difference in mortality between groups receiving fresh RBCs and standard-issue RBCs. We then state the alternate hypothesis—There is a difference between groups receiving fresh RBCs and standard-issue RBCs. It is important to note that we have stated that the groups are different, without specifying which group will be better than the other. This is known as a two-tailed hypothesis and it allows us to test for superiority on either side (using a two-sided test). This is because, when we start a study, we are not 100% certain that the new treatment can only be better than the standard treatment—it could be worse, and if it is so, the study should pick it up as well. One tailed hypothesis and one-sided statistical testing is done for non-inferiority studies, which will be discussed in a subsequent paper in this series.

STATISTICAL ERRORS

There are two possibilities to consider when interpreting the results of a superiority study. The first possibility is that there is truly no difference between the treatments but the study finds that they are different. This is called a Type-1 error or false-positive error or alpha error. This means falsely rejecting the null hypothesis.

The second possibility is that there is a difference between the treatments and the study does not pick up this difference. This is called a Type 2 error or false-negative error or beta error. This means falsely accepting the null hypothesis.

The power of the study is the ability to detect a difference between groups and is the converse of the beta error; i.e., power = 1-beta error. Alpha and beta errors are finalized when the protocol is written and form the basis for sample size calculation for the study. In an ideal world, we would not like any error in the results of our study; however, we would need to do the study in the entire population (infinite sample size) to be able to get a 0% alpha and beta error. These two errors enable us to do studies with realistic sample sizes, with the compromise that there is a small possibility that the results may not always reflect the truth. The basis for this will be discussed in a subsequent paper in this series dealing with sample size calculation.

Conventionally, type 1 or alpha error is set at 5%. This means, that at the end of the study, if there is a difference between groups, we want to be 95% certain that this is a true difference and allow only a 5% probability that this difference has occurred by chance (false positive). Type 2 or beta error is usually set between 10% and 20%; therefore, the power of the study is 90% or 80%. This means that if there is a difference between groups, we want to be 80% (or 90%) certain that the study will detect that difference. For example, in the ABLE study, sample size was calculated with a type 1 error of 5% (two-sided) and power of 90% (type 2 error of 10%) (1).

Table 1 gives a summary of the two types of statistical errors with an example

Statistical errors

In the next article in this series, we will look at the meaning and interpretation of ‘ p ’ value and confidence intervals for hypothesis testing.

Source of support: Nil

Conflict of interest: None

Hypothesis Testing and Types of Errors

Article info.

  • Statistical Inference
  • Null Hypothesis
  • Bayes Factor
  • Bayesian Inference
  • Sampling and Estimation

Article Versions

  • 14 2021-05-28 15:47:23 2562,2561 14,2562 By arvindpdmn Adding info on base rate and confidence interval.
  • 13 2021-05-28 15:20:55 2561,2560 13,2561 By arvindpdmn Minor edit
  • 12 2021-05-28 15:11:35 2560,2559 12,2560 By arvindpdmn Milestones added. Added question on misconceptions.
  • 11 2021-05-28 13:22:05 2559,2116 11,2559 By arvindpdmn Minor reordering of questions. Merge two questions into one. Added more refs and citations to remove warnings. Other corrections. Milestones are pending.
  • 10 2020-07-15 06:11:06 2116,1611 10,2116 By arvindpdmn Reducing to 8 tags. This is the maximum that will be imposed in the next release. Corrected spelling.
  • Submitting ... You are editing an existing chat message. All Versions 2021-05-28 15:47:23 by arvindpdmn 2021-05-28 15:20:55 by arvindpdmn 2021-05-28 15:11:35 by arvindpdmn 2021-05-28 13:22:05 by arvindpdmn 2020-07-15 06:11:06 by arvindpdmn 2019-09-23 10:56:34 by arvindpdmn 2019-03-13 15:34:32 by arvindpdmn 2018-05-29 05:32:41 by arvindpdmn 2018-05-27 12:14:19 by raam.raam 2018-05-26 11:37:25 by raam.raam 2018-05-21 10:59:24 by arvindpdmn 2018-05-21 10:46:31 by arvindpdmn 2018-05-18 07:27:06 by raam.raam 2018-05-18 06:19:18 by raam.raam All Sections Summary Discussion Sample Code References Milestones Tags See Also Further Reading
  • 2021-05-28 13:12:19 - By raam.raam It is the error rate that is related and not error quantum. The following article puts this nicely. https://www.scribbr.com/statistics/type-i-and-type-ii-errors/#:~:text=Trade%2Doff%20between%20Type%20I%20and%20Type%20II%20errors,-The%20Type%20I&text=This%20means%20there's%20an%20important,a%20Type%20I%20error%20risk.
  • 2021-05-28 12:57:18 - By arvindpdmn I am anyway updating the article to remove warnings. Will edit as part of the update.
  • 2021-05-28 12:36:34 - 1 By raam.raam I will correct the relationship between alpha and beta. They are dependent
  • 2021-05-28 12:05:26 - By raam.raam as a special case when null and alternate hypotheses distributions are overlapping, it may be. But don't think can be generalized. I will look for more references.
  • 2021-05-28 11:30:47 - 1 By arvindpdmn Need to clarify "Errors α and β are independent of each other. Increasing one does not decrease the other.". This ref says otherwise: https://www.afit.edu/stat/statcoe_files/8__The_Logic_of_Statistical_Hypothesis_Testing.pdf

Suppose we want to study income of a population. We study a sample from the population and draw conclusions. The sample should represent the population for our study to be a reliable one.

Null hypothesis \((H_0)\) is that sample represents population. Hypothesis testing provides us with framework to conclude if we have sufficient evidence to either accept or reject null hypothesis.

Population characteristics are either assumed or drawn from third-party sources or judgements by subject matter experts. Population data and sample data are characterised by moments of its distribution (mean, variance, skewness and kurtosis). We test null hypothesis for equality of moments where population characteristic is available and conclude if sample represents population.

For example, given only mean income of population, we validate if mean income of sample is close to population mean to conclude if sample represents the population.

Population and sample parameters. Source: Rolke 2018.

Population mean and population variance are denoted in Greek alphabets \(\mu\) and \(\sigma^2\) respectively, while sample mean and sample variance are denoted in English alphabets \(\bar x\) and \(s^2\) respectively.

Graphical representations of sampling error. Source: Nurse Key 2017, fig. 15-2.

  • If the difference is not significant, we conclude the difference is due to sampling. This is called sampling error and this happens due to chance.
  • If the difference is significant, we conclude the sample does not represent the population. The reason has to be more than chance for difference to be explained.

Hypothesis testing helps us to conclude if the difference is due to sampling error or due to reasons beyond sampling error.

A common assumption is that the observations are independent and come from a random sample. The population distribution must be Normal or the sample size is large enough. If the sample size is large enough, we can invoke the Central Limit Theorem ( CLT ) regardless of the underlying population distribution. Due to CLT , sampling distribution of the sample statistic (such as sample mean) will be approximately a Normal distribution.

A rule of thumb is 30 observations but in some cases even 10 observations may be sufficient to invoke the CLT . Others require at least 50 observations.

When acceptance of \(H_0\) involves boundaries on both sides, we invoke the two-tailed test . For example, if we define \(H_0\) as sample drawn from population with age limits in the range of 25 to 35, then testing of \(H_0\) involves limits on both sides.

Suppose we define the population as greater than age 50, we are interested in rejecting a sample if the age is less than or equal to 50; we are not concerned about any upper limit. Here we invoke the one-tailed test . A one-tailed test could be left-tailed or right-tailed.

  • \(H_0\): \(\mu = \$ 2.62\)
  • \(H_1\) right-tailed: \(\mu > \$ 2.62\)
  • \(H_1\) two-tailed: \(\mu \neq \$ 2.62\)

Matrix showing types of errors in hypothesis testing. Source: howMed 2013.

  • Not accepting that sample represents population when in reality it does. This is called type-I or \(\alpha\) error .
  • Accepting that sample represents population when in reality it does not. This is called type-II or \(\beta\) error .

For instance, granting loan to an applicant with low credit score is \(\alpha\) error. Not granting loan to an applicant with high credit score is (\(\beta\)) error.

The symbols \(\alpha\) and \(\beta\) are used to represent the probability of type-I and type-II errors respectively.

Illustration of p-value in the population distribution. Source: Heard 2015.

The p-value can be interpreted as the probability of getting a result that's same or more extreme when the null hypothesis is true.

The observed sample mean \(\bar x\) is overlaid on population distribution of values with mean \(\mu\) and variance \(\sigma^2\). The proportion of values beyond \(\bar x\) and away from \(\mu\) (either in left tail or in right tail or in both tails) is p-value . If p-value <= \(\alpha\) we reject null hypothesis. The results are said to be statistically significant and not due to chance.

Assuming \(\alpha\)=0.05, p-value > 5%, we conclude the sample is highly likely to be drawn from population with mean \(\mu\) and variance \(\sigma^2\). We accept \((H_0)\). Otherwise, there's insufficient evidence to be part of population and we reject \(H_0\).

We preselect \(\alpha\) based on how much type-I error we're willing to tolerate. \(\alpha\) is called level of significance . The standard for level of significance is 0.05 but in some studies it may be 0.01 or 0.1. In the case of two-tailed tests, it's \(\alpha/2\) on either side.

As sample size increases the margin of error falls. Source: Wikipedia 2018.

Law of Large Numbers suggests larger the sample size, the more accurate the estimate. Accuracy means the variance of estimate will tend towards zero as sample size increases. Sample Size can be determined to suit accepted level of tolerance for deviation.

Confidence interval of sample mean is determined from sample mean offset by variance on either side of the sample mean. If the population variance is known, then we conduct z-test based on Normal distribution. Otherwise, variance has to be estimated and we use t-test based on t-distribution.

The formulae for determining sample size and confidence interval depends on what we to estimate (mean/variance/others), sampling distribution of estimate and standard deviation of estimate's sampling distribution.

Illustrating type-II or beta error. Source: Gordon 2011.

We overlay sample mean's distribution on population distribution, the proportion of overlap of sampling estimate's distribution on population distribution is \(\beta\) error .

Larger the overlap, larger the chance the sample does belong to population with mean \(\mu\) and variance \(\sigma^2\). Incidentally, despite the overlap, p-value may be less than 5%. This happens when sample mean is way off population mean, but the variance of sample mean is such that the overlap is significant.

Understanding alpha and beta errors together. Source: McNeese 2015.

Errors \(\alpha\) and \(\beta\) are dependent on each other. Increasing one decreases the other. Choosing suitable values for these depends on the cost of making these errors. Perhaps it's worse to convict an innocent person (type-I error) than to acquit a guilty person (type-II error), in which case we choose a lower \(\alpha\). But it's possible to decrease both errors but collecting more data.

  • Probability of rejecting the null hypothesis when, in fact, it is false.
  • Probability that a test of significance will pick up on an effect that is present.
  • Probability of avoiding a Type II error.

Low p-value and high power help us decisively conclude sample doesn't belong to population. When we cannot conclude decisively, it's advisable to go for larger samples and multiple samples.

In fact, power is increased by increasing sample size, effect sizes and significance levels. Variance also affects power.

Flowchart showing the classification of 1000 theoretical null hypotheses. Source: Biau et al. 2010, fig. 2.

A common misconception is to consider "p value as the probability that the null hypothesis is true". In fact, p-value is computed under the assumption that the null hypothesis is true. P-value is the probability of observing the values, or more extremes values, if the null hypothesis is true.

Another misconception, sometimes called base rate fallacy , is that under controlled \(\alpha\) and adequate power, statistically significant results correspond to true differences. This is not the case, as shown in the figure. Even with \(\alpha\)=5% and power=80%, 36% of statistically significant p-values will not report the true difference. This is because only 10% of the null hypotheses are false (base rate) and 80% power on these gives only 80 true positives.

P-value doesn't measure the size of the effect, for which confidence interval is a better approach. A drug that gives 25% improvement may not mean much if symptoms are innocuous compared to another drug that gives small improvement from a disease that leads to certain death. Context is therefore important.

Early work on statistical testing. Source: Huberty 1993, table 1.

The field of statistical testing probably starts with John Arbuthnot who applies it to test sex ratios at birth. Subsequently, others in the 18th and 19th centuries use it in other fields. However, modern terminology (null hypothesis, p-value, type-I or type-II errors) is formed only in the 20th century.

Table of P values published by Pearson. Source: Pearson 1900, pp. 175.

Pearson introduces the concept of p-value with the chi-squared test. He gives equations for calculating P and states that it's "the measure of the probability of a complex system of n errors occurring with a frequency as great or greater than that of the observed system."

Ronald A. Fisher develops the concept of p-value and shows how to calculate it in a wide variety of situations. He also notes that a value of 0.05 may be considered as conventional cut-off.

Illustrating both type-I and type-II errors with shaded regions. Source: Neyman and Pearson 1933, fig. 5.

Neyman and Pearson publish On the problem of the most efficient tests of statistical hypotheses . They introduce the notion of alternative hypotheses . They also describe both type-I and type-II errors (although they don't use these terms). They state, "Without hoping to know whether each separate hypothesis is true or false, we may search for rules to govern our behaviour with regard to them, in following which we insure that, in the long run of experience, we shall not be too often wrong."

Johnson's textbook titled Statistical methods in research is perhaps the first to introduce to students the Neyman-Pearson hypothesis testing at a time when most textbooks follow Fisher's significance testing. Johnson uses the terms "error of the first kind" and "error of the second kind". In time, Fisher's approach is called P-value approach and the Neyman-Pearson approach is called fixed-α approach .

Carver makes the following suggestions: use of the term "statistically significant"; interpret results with respect to the data first and statistical significance second; and pay attention to the size of the effect.

  • Biau, David Jean, Brigitte M. Jolles, and Raphaël Porcher. 2010. "P Value and the Theory of Hypothesis Testing: An Explanation for New Researchers." Clin Orthop Relat Res, vol. 468, no. 3, pp. 885–892, March. Accessed 2021-05-28.
  • Carver, Ronald P. 1993. "The Case against Statistical Significance Testing, Revisited." The Journal of Experimental Education, vol. 61, no. 4, Statistical Significance Testing in Contemporary Practice, pp. 287-292. Accessed 2021-05-28.
  • Frankfort-Nachmias, Chava, Anna Leon-Guerrero, and Georgiann Davis. 2020. "Chapter 8: Testing Hypotheses." In: Social Statistics for a Diverse Society, SAGE Publications. Accessed 2021-05-28.
  • Gordon, Max. 2011. "How to best display graphically type II (beta) error, power and sample size?" August 11. Accessed 2018-05-18.
  • Heard, Stephen B. 2015. "In defence of the P-value" Types of Errors. February 9. Updated 2015-12-04. Accessed 2018-05-18.
  • Huberty, Carl J. 1993. "Historical Origins of Statistical Testing Practices: The Treatment of Fisher versus Neyman-Pearson Views in Textbooks." The Journal of Experimental Education, vol. 61, no. 4, Statistical Significance Testing in Contemporary Practice, pp. 317-333. Accessed 2021-05-28.
  • Kensler, Jennifer. 2013. "The Logic of Statistical Hypothesis Testing: Best Practice." Report, STAT T&E Center of Excellence. Accessed 2021-05-28.
  • Klappa, Peter. 2014. "Sampling error and hypothesis testing." On YouTube, December 10. Accessed 2021-05-28.
  • Lane, David M. 2021. "Section 10.8: Confidence Interval on the Mean." In: Introduction to Statistics, Rice University. Accessed 2021-05-28.
  • McNeese, Bill. 2015. "How Many Samples Do I Need?" SPC For Excel, BPI Consulting, June. Accessed 2018-05-18.
  • McNeese, Bill. 2017. "Interpretation of Alpha and p-Value." SPC for Excel, BPI Consulting, April 6. Updated 2020-04-25. Accessed 2021-05-28.
  • Neyman, J., and E. S. Pearson. 1933. "On the problem of the most efficient tests of statistical hypotheses." Philos Trans R Soc Lond A., vol. 231, issue 694-706, pp. 289–337. doi: 10.1098/rsta.1933.0009. Accessed 2021-05-28.
  • Nurse Key. 2017. "Chapter 15: Sampling." February 17. Accessed 2018-05-18.
  • Pearson, Karl. 1900. "On the criterion that a given system of deviations from the probable in the case of a correlated system of variables is such that it can be reasonably supposed to have arisen from random sampling." Philosophical Magazine, Series 5 (1876-1900), pp. 157–175. Accessed 2021-05-28.
  • Reinhart, Alex. 2015. "Statistics Done Wrong: The Woefully Complete Guide." No Starch Press.
  • Rolke, Wolfgang A. 2018. "Quantitative Variables." Department of Mathematical Sciences, University of Puerto Rico - Mayaguez. Accessed 2018-05-18.
  • Six-Sigma-Material.com. 2016. "Population & Samples." Six-Sigma-Material.com. Accessed 2018-05-18.
  • Walmsley, Angela and Michael C. Brown. 2017. "What is Power?" Statistics Teacher, American Statistical Association, September 15. Accessed 2021-05-28.
  • Wang, Jing. 2014. "Chapter 4.II: Hypothesis Testing." Applied Statistical Methods II, Univ. of Illinois Chicago. Accessed 2021-05-28.
  • Weigle, David C. 1994. "Historical Origins of Contemporary Statistical Testing Practices: How in the World Did Significance Testing Assume Its Current Place in Contemporary Analytic Practice?" Paper presented at the Annual Meeting of the Southwest Educational Research Association, SanAntonio, TX, January 27. Accessed 2021-05-28.
  • Wikipedia. 2018. "Margin of Error." May 1. Accessed 2018-05-18.
  • Wikipedia. 2021. "Law of large numbers." Wikipedia, March 26. Accessed 2021-05-28.
  • howMed. 2013. "Significance Testing and p value." August 4. Updated 2013-08-08. Accessed 2018-05-18.

Further Reading

  • Foley, Hugh. 2018. "Introduction to Hypothesis Testing." Skidmore College. Accessed 2018-05-18.
  • Buskirk, Trent. 2015. "Sampling Error in Surveys." Accessed 2018-05-18.
  • Zaiontz, Charles. 2014. "Assumptions for Statistical Tests." Real Statistics Using Excel. Accessed 2018-05-18.
  • DeCook, Rhonda. 2018. "Section 9.2: Types of Errors in Hypothesis testing." Stat1010 Notes, Department of Statistics and Actuarial Science, University of Iowa. Accessed 2018-05-18.

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How to Write a Great Hypothesis

Hypothesis Definition, Format, Examples, and Tips

Kendra Cherry, MS, is a psychosocial rehabilitation specialist, psychology educator, and author of the "Everything Psychology Book."

what is error in writing hypothesis

Amy Morin, LCSW, is a psychotherapist and international bestselling author. Her books, including "13 Things Mentally Strong People Don't Do," have been translated into more than 40 languages. Her TEDx talk,  "The Secret of Becoming Mentally Strong," is one of the most viewed talks of all time.

what is error in writing hypothesis

Verywell / Alex Dos Diaz

  • The Scientific Method

Hypothesis Format

Falsifiability of a hypothesis.

  • Operationalization

Hypothesis Types

Hypotheses examples.

  • Collecting Data

A hypothesis is a tentative statement about the relationship between two or more variables. It is a specific, testable prediction about what you expect to happen in a study. It is a preliminary answer to your question that helps guide the research process.

Consider a study designed to examine the relationship between sleep deprivation and test performance. The hypothesis might be: "This study is designed to assess the hypothesis that sleep-deprived people will perform worse on a test than individuals who are not sleep-deprived."

At a Glance

A hypothesis is crucial to scientific research because it offers a clear direction for what the researchers are looking to find. This allows them to design experiments to test their predictions and add to our scientific knowledge about the world. This article explores how a hypothesis is used in psychology research, how to write a good hypothesis, and the different types of hypotheses you might use.

The Hypothesis in the Scientific Method

In the scientific method , whether it involves research in psychology, biology, or some other area, a hypothesis represents what the researchers think will happen in an experiment. The scientific method involves the following steps:

  • Forming a question
  • Performing background research
  • Creating a hypothesis
  • Designing an experiment
  • Collecting data
  • Analyzing the results
  • Drawing conclusions
  • Communicating the results

The hypothesis is a prediction, but it involves more than a guess. Most of the time, the hypothesis begins with a question which is then explored through background research. At this point, researchers then begin to develop a testable hypothesis.

Unless you are creating an exploratory study, your hypothesis should always explain what you  expect  to happen.

In a study exploring the effects of a particular drug, the hypothesis might be that researchers expect the drug to have some type of effect on the symptoms of a specific illness. In psychology, the hypothesis might focus on how a certain aspect of the environment might influence a particular behavior.

Remember, a hypothesis does not have to be correct. While the hypothesis predicts what the researchers expect to see, the goal of the research is to determine whether this guess is right or wrong. When conducting an experiment, researchers might explore numerous factors to determine which ones might contribute to the ultimate outcome.

In many cases, researchers may find that the results of an experiment  do not  support the original hypothesis. When writing up these results, the researchers might suggest other options that should be explored in future studies.

In many cases, researchers might draw a hypothesis from a specific theory or build on previous research. For example, prior research has shown that stress can impact the immune system. So a researcher might hypothesize: "People with high-stress levels will be more likely to contract a common cold after being exposed to the virus than people who have low-stress levels."

In other instances, researchers might look at commonly held beliefs or folk wisdom. "Birds of a feather flock together" is one example of folk adage that a psychologist might try to investigate. The researcher might pose a specific hypothesis that "People tend to select romantic partners who are similar to them in interests and educational level."

Elements of a Good Hypothesis

So how do you write a good hypothesis? When trying to come up with a hypothesis for your research or experiments, ask yourself the following questions:

  • Is your hypothesis based on your research on a topic?
  • Can your hypothesis be tested?
  • Does your hypothesis include independent and dependent variables?

Before you come up with a specific hypothesis, spend some time doing background research. Once you have completed a literature review, start thinking about potential questions you still have. Pay attention to the discussion section in the  journal articles you read . Many authors will suggest questions that still need to be explored.

How to Formulate a Good Hypothesis

To form a hypothesis, you should take these steps:

  • Collect as many observations about a topic or problem as you can.
  • Evaluate these observations and look for possible causes of the problem.
  • Create a list of possible explanations that you might want to explore.
  • After you have developed some possible hypotheses, think of ways that you could confirm or disprove each hypothesis through experimentation. This is known as falsifiability.

In the scientific method ,  falsifiability is an important part of any valid hypothesis. In order to test a claim scientifically, it must be possible that the claim could be proven false.

Students sometimes confuse the idea of falsifiability with the idea that it means that something is false, which is not the case. What falsifiability means is that  if  something was false, then it is possible to demonstrate that it is false.

One of the hallmarks of pseudoscience is that it makes claims that cannot be refuted or proven false.

The Importance of Operational Definitions

A variable is a factor or element that can be changed and manipulated in ways that are observable and measurable. However, the researcher must also define how the variable will be manipulated and measured in the study.

Operational definitions are specific definitions for all relevant factors in a study. This process helps make vague or ambiguous concepts detailed and measurable.

For example, a researcher might operationally define the variable " test anxiety " as the results of a self-report measure of anxiety experienced during an exam. A "study habits" variable might be defined by the amount of studying that actually occurs as measured by time.

These precise descriptions are important because many things can be measured in various ways. Clearly defining these variables and how they are measured helps ensure that other researchers can replicate your results.

Replicability

One of the basic principles of any type of scientific research is that the results must be replicable.

Replication means repeating an experiment in the same way to produce the same results. By clearly detailing the specifics of how the variables were measured and manipulated, other researchers can better understand the results and repeat the study if needed.

Some variables are more difficult than others to define. For example, how would you operationally define a variable such as aggression ? For obvious ethical reasons, researchers cannot create a situation in which a person behaves aggressively toward others.

To measure this variable, the researcher must devise a measurement that assesses aggressive behavior without harming others. The researcher might utilize a simulated task to measure aggressiveness in this situation.

Hypothesis Checklist

  • Does your hypothesis focus on something that you can actually test?
  • Does your hypothesis include both an independent and dependent variable?
  • Can you manipulate the variables?
  • Can your hypothesis be tested without violating ethical standards?

The hypothesis you use will depend on what you are investigating and hoping to find. Some of the main types of hypotheses that you might use include:

  • Simple hypothesis : This type of hypothesis suggests there is a relationship between one independent variable and one dependent variable.
  • Complex hypothesis : This type suggests a relationship between three or more variables, such as two independent and dependent variables.
  • Null hypothesis : This hypothesis suggests no relationship exists between two or more variables.
  • Alternative hypothesis : This hypothesis states the opposite of the null hypothesis.
  • Statistical hypothesis : This hypothesis uses statistical analysis to evaluate a representative population sample and then generalizes the findings to the larger group.
  • Logical hypothesis : This hypothesis assumes a relationship between variables without collecting data or evidence.

A hypothesis often follows a basic format of "If {this happens} then {this will happen}." One way to structure your hypothesis is to describe what will happen to the  dependent variable  if you change the  independent variable .

The basic format might be: "If {these changes are made to a certain independent variable}, then we will observe {a change in a specific dependent variable}."

A few examples of simple hypotheses:

  • "Students who eat breakfast will perform better on a math exam than students who do not eat breakfast."
  • "Students who experience test anxiety before an English exam will get lower scores than students who do not experience test anxiety."​
  • "Motorists who talk on the phone while driving will be more likely to make errors on a driving course than those who do not talk on the phone."
  • "Children who receive a new reading intervention will have higher reading scores than students who do not receive the intervention."

Examples of a complex hypothesis include:

  • "People with high-sugar diets and sedentary activity levels are more likely to develop depression."
  • "Younger people who are regularly exposed to green, outdoor areas have better subjective well-being than older adults who have limited exposure to green spaces."

Examples of a null hypothesis include:

  • "There is no difference in anxiety levels between people who take St. John's wort supplements and those who do not."
  • "There is no difference in scores on a memory recall task between children and adults."
  • "There is no difference in aggression levels between children who play first-person shooter games and those who do not."

Examples of an alternative hypothesis:

  • "People who take St. John's wort supplements will have less anxiety than those who do not."
  • "Adults will perform better on a memory task than children."
  • "Children who play first-person shooter games will show higher levels of aggression than children who do not." 

Collecting Data on Your Hypothesis

Once a researcher has formed a testable hypothesis, the next step is to select a research design and start collecting data. The research method depends largely on exactly what they are studying. There are two basic types of research methods: descriptive research and experimental research.

Descriptive Research Methods

Descriptive research such as  case studies ,  naturalistic observations , and surveys are often used when  conducting an experiment is difficult or impossible. These methods are best used to describe different aspects of a behavior or psychological phenomenon.

Once a researcher has collected data using descriptive methods, a  correlational study  can examine how the variables are related. This research method might be used to investigate a hypothesis that is difficult to test experimentally.

Experimental Research Methods

Experimental methods  are used to demonstrate causal relationships between variables. In an experiment, the researcher systematically manipulates a variable of interest (known as the independent variable) and measures the effect on another variable (known as the dependent variable).

Unlike correlational studies, which can only be used to determine if there is a relationship between two variables, experimental methods can be used to determine the actual nature of the relationship—whether changes in one variable actually  cause  another to change.

The hypothesis is a critical part of any scientific exploration. It represents what researchers expect to find in a study or experiment. In situations where the hypothesis is unsupported by the research, the research still has value. Such research helps us better understand how different aspects of the natural world relate to one another. It also helps us develop new hypotheses that can then be tested in the future.

Thompson WH, Skau S. On the scope of scientific hypotheses .  R Soc Open Sci . 2023;10(8):230607. doi:10.1098/rsos.230607

Taran S, Adhikari NKJ, Fan E. Falsifiability in medicine: what clinicians can learn from Karl Popper [published correction appears in Intensive Care Med. 2021 Jun 17;:].  Intensive Care Med . 2021;47(9):1054-1056. doi:10.1007/s00134-021-06432-z

Eyler AA. Research Methods for Public Health . 1st ed. Springer Publishing Company; 2020. doi:10.1891/9780826182067.0004

Nosek BA, Errington TM. What is replication ?  PLoS Biol . 2020;18(3):e3000691. doi:10.1371/journal.pbio.3000691

Aggarwal R, Ranganathan P. Study designs: Part 2 - Descriptive studies .  Perspect Clin Res . 2019;10(1):34-36. doi:10.4103/picr.PICR_154_18

Nevid J. Psychology: Concepts and Applications. Wadworth, 2013.

By Kendra Cherry, MSEd Kendra Cherry, MS, is a psychosocial rehabilitation specialist, psychology educator, and author of the "Everything Psychology Book."

Statology

Statistics Made Easy

How to Write Hypothesis Test Conclusions (With Examples)

A   hypothesis test is used to test whether or not some hypothesis about a population parameter is true.

To perform a hypothesis test in the real world, researchers obtain a random sample from the population and perform a hypothesis test on the sample data, using a null and alternative hypothesis:

  • Null Hypothesis (H 0 ): The sample data occurs purely from chance.
  • Alternative Hypothesis (H A ): The sample data is influenced by some non-random cause.

If the p-value of the hypothesis test is less than some significance level (e.g. α = .05), then we reject the null hypothesis .

Otherwise, if the p-value is not less than some significance level then we fail to reject the null hypothesis .

When writing the conclusion of a hypothesis test, we typically include:

  • Whether we reject or fail to reject the null hypothesis.
  • The significance level.
  • A short explanation in the context of the hypothesis test.

For example, we would write:

We reject the null hypothesis at the 5% significance level.   There is sufficient evidence to support the claim that…

Or, we would write:

We fail to reject the null hypothesis at the 5% significance level.   There is not sufficient evidence to support the claim that…

The following examples show how to write a hypothesis test conclusion in both scenarios.

Example 1: Reject the Null Hypothesis Conclusion

Suppose a biologist believes that a certain fertilizer will cause plants to grow more during a one-month period than they normally do, which is currently 20 inches. To test this, she applies the fertilizer to each of the plants in her laboratory for one month.

She then performs a hypothesis test at a 5% significance level using the following hypotheses:

  • H 0 : μ = 20 inches (the fertilizer will have no effect on the mean plant growth)
  • H A : μ > 20 inches (the fertilizer will cause mean plant growth to increase)

Suppose the p-value of the test turns out to be 0.002.

Here is how she would report the results of the hypothesis test:

We reject the null hypothesis at the 5% significance level.   There is sufficient evidence to support the claim that this particular fertilizer causes plants to grow more during a one-month period than they normally do.

Example 2: Fail to Reject the Null Hypothesis Conclusion

Suppose the manager of a manufacturing plant wants to test whether or not some new method changes the number of defective widgets produced per month, which is currently 250. To test this, he measures the mean number of defective widgets produced before and after using the new method for one month.

He performs a hypothesis test at a 10% significance level using the following hypotheses:

  • H 0 : μ after = μ before (the mean number of defective widgets is the same before and after using the new method)
  • H A : μ after ≠ μ before (the mean number of defective widgets produced is different before and after using the new method)

Suppose the p-value of the test turns out to be 0.27.

Here is how he would report the results of the hypothesis test:

We fail to reject the null hypothesis at the 10% significance level.   There is not sufficient evidence to support the claim that the new method leads to a change in the number of defective widgets produced per month.

Additional Resources

The following tutorials provide additional information about hypothesis testing:

Introduction to Hypothesis Testing 4 Examples of Hypothesis Testing in Real Life How to Write a Null Hypothesis

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General Education

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Think about something strange and unexplainable in your life. Maybe you get a headache right before it rains, or maybe you think your favorite sports team wins when you wear a certain color. If you wanted to see whether these are just coincidences or scientific fact, you would form a hypothesis, then create an experiment to see whether that hypothesis is true or not.

But what is a hypothesis, anyway? If you’re not sure about what a hypothesis is--or how to test for one!--you’re in the right place. This article will teach you everything you need to know about hypotheses, including: 

  • Defining the term “hypothesis” 
  • Providing hypothesis examples 
  • Giving you tips for how to write your own hypothesis

So let’s get started!

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What Is a Hypothesis?

Merriam Webster defines a hypothesis as “an assumption or concession made for the sake of argument.” In other words, a hypothesis is an educated guess . Scientists make a reasonable assumption--or a hypothesis--then design an experiment to test whether it’s true or not. Keep in mind that in science, a hypothesis should be testable. You have to be able to design an experiment that tests your hypothesis in order for it to be valid. 

As you could assume from that statement, it’s easy to make a bad hypothesis. But when you’re holding an experiment, it’s even more important that your guesses be good...after all, you’re spending time (and maybe money!) to figure out more about your observation. That’s why we refer to a hypothesis as an educated guess--good hypotheses are based on existing data and research to make them as sound as possible.

Hypotheses are one part of what’s called the scientific method .  Every (good) experiment or study is based in the scientific method. The scientific method gives order and structure to experiments and ensures that interference from scientists or outside influences does not skew the results. It’s important that you understand the concepts of the scientific method before holding your own experiment. Though it may vary among scientists, the scientific method is generally made up of six steps (in order):

  • Observation
  • Asking questions
  • Forming a hypothesis
  • Analyze the data
  • Communicate your results

You’ll notice that the hypothesis comes pretty early on when conducting an experiment. That’s because experiments work best when they’re trying to answer one specific question. And you can’t conduct an experiment until you know what you’re trying to prove!

Independent and Dependent Variables 

After doing your research, you’re ready for another important step in forming your hypothesis: identifying variables. Variables are basically any factor that could influence the outcome of your experiment . Variables have to be measurable and related to the topic being studied.

There are two types of variables:  independent variables and dependent variables. I ndependent variables remain constant . For example, age is an independent variable; it will stay the same, and researchers can look at different ages to see if it has an effect on the dependent variable. 

Speaking of dependent variables... dependent variables are subject to the influence of the independent variable , meaning that they are not constant. Let’s say you want to test whether a person’s age affects how much sleep they need. In that case, the independent variable is age (like we mentioned above), and the dependent variable is how much sleep a person gets. 

Variables will be crucial in writing your hypothesis. You need to be able to identify which variable is which, as both the independent and dependent variables will be written into your hypothesis. For instance, in a study about exercise, the independent variable might be the speed at which the respondents walk for thirty minutes, and the dependent variable would be their heart rate. In your study and in your hypothesis, you’re trying to understand the relationship between the two variables.

Elements of a Good Hypothesis

The best hypotheses start by asking the right questions . For instance, if you’ve observed that the grass is greener when it rains twice a week, you could ask what kind of grass it is, what elevation it’s at, and if the grass across the street responds to rain in the same way. Any of these questions could become the backbone of experiments to test why the grass gets greener when it rains fairly frequently.

As you’re asking more questions about your first observation, make sure you’re also making more observations . If it doesn’t rain for two weeks and the grass still looks green, that’s an important observation that could influence your hypothesis. You'll continue observing all throughout your experiment, but until the hypothesis is finalized, every observation should be noted.

Finally, you should consult secondary research before writing your hypothesis . Secondary research is comprised of results found and published by other people. You can usually find this information online or at your library. Additionally, m ake sure the research you find is credible and related to your topic. If you’re studying the correlation between rain and grass growth, it would help you to research rain patterns over the past twenty years for your county, published by a local agricultural association. You should also research the types of grass common in your area, the type of grass in your lawn, and whether anyone else has conducted experiments about your hypothesis. Also be sure you’re checking the quality of your research . Research done by a middle school student about what minerals can be found in rainwater would be less useful than an article published by a local university.

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Writing Your Hypothesis

Once you’ve considered all of the factors above, you’re ready to start writing your hypothesis. Hypotheses usually take a certain form when they’re written out in a research report.

When you boil down your hypothesis statement, you are writing down your best guess and not the question at hand . This means that your statement should be written as if it is fact already, even though you are simply testing it.

The reason for this is that, after you have completed your study, you'll either accept or reject your if-then or your null hypothesis. All hypothesis testing examples should be measurable and able to be confirmed or denied. You cannot confirm a question, only a statement! 

In fact, you come up with hypothesis examples all the time! For instance, when you guess on the outcome of a basketball game, you don’t say, “Will the Miami Heat beat the Boston Celtics?” but instead, “I think the Miami Heat will beat the Boston Celtics.” You state it as if it is already true, even if it turns out you’re wrong. You do the same thing when writing your hypothesis.

Additionally, keep in mind that hypotheses can range from very specific to very broad.  These hypotheses can be specific, but if your hypothesis testing examples involve a broad range of causes and effects, your hypothesis can also be broad.  

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The Two Types of Hypotheses

Now that you understand what goes into a hypothesis, it’s time to look more closely at the two most common types of hypothesis: the if-then hypothesis and the null hypothesis.

#1: If-Then Hypotheses

First of all, if-then hypotheses typically follow this formula:

If ____ happens, then ____ will happen.

The goal of this type of hypothesis is to test the causal relationship between the independent and dependent variable. It’s fairly simple, and each hypothesis can vary in how detailed it can be. We create if-then hypotheses all the time with our daily predictions. Here are some examples of hypotheses that use an if-then structure from daily life: 

  • If I get enough sleep, I’ll be able to get more work done tomorrow.
  • If the bus is on time, I can make it to my friend’s birthday party. 
  • If I study every night this week, I’ll get a better grade on my exam. 

In each of these situations, you’re making a guess on how an independent variable (sleep, time, or studying) will affect a dependent variable (the amount of work you can do, making it to a party on time, or getting better grades). 

You may still be asking, “What is an example of a hypothesis used in scientific research?” Take one of the hypothesis examples from a real-world study on whether using technology before bed affects children’s sleep patterns. The hypothesis read s:

“We hypothesized that increased hours of tablet- and phone-based screen time at bedtime would be inversely correlated with sleep quality and child attention.”

It might not look like it, but this is an if-then statement. The researchers basically said, “If children have more screen usage at bedtime, then their quality of sleep and attention will be worse.” The sleep quality and attention are the dependent variables and the screen usage is the independent variable. (Usually, the independent variable comes after the “if” and the dependent variable comes after the “then,” as it is the independent variable that affects the dependent variable.) This is an excellent example of how flexible hypothesis statements can be, as long as the general idea of “if-then” and the independent and dependent variables are present.

#2: Null Hypotheses

Your if-then hypothesis is not the only one needed to complete a successful experiment, however. You also need a null hypothesis to test it against. In its most basic form, the null hypothesis is the opposite of your if-then hypothesis . When you write your null hypothesis, you are writing a hypothesis that suggests that your guess is not true, and that the independent and dependent variables have no relationship .

One null hypothesis for the cell phone and sleep study from the last section might say: 

“If children have more screen usage at bedtime, their quality of sleep and attention will not be worse.” 

In this case, this is a null hypothesis because it’s asking the opposite of the original thesis! 

Conversely, if your if-then hypothesis suggests that your two variables have no relationship, then your null hypothesis would suggest that there is one. So, pretend that there is a study that is asking the question, “Does the amount of followers on Instagram influence how long people spend on the app?” The independent variable is the amount of followers, and the dependent variable is the time spent. But if you, as the researcher, don’t think there is a relationship between the number of followers and time spent, you might write an if-then hypothesis that reads:

“If people have many followers on Instagram, they will not spend more time on the app than people who have less.”

In this case, the if-then suggests there isn’t a relationship between the variables. In that case, one of the null hypothesis examples might say:

“If people have many followers on Instagram, they will spend more time on the app than people who have less.”

You then test both the if-then and the null hypothesis to gauge if there is a relationship between the variables, and if so, how much of a relationship. 

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4 Tips to Write the Best Hypothesis

If you’re going to take the time to hold an experiment, whether in school or by yourself, you’re also going to want to take the time to make sure your hypothesis is a good one. The best hypotheses have four major elements in common: plausibility, defined concepts, observability, and general explanation.

#1: Plausibility

At first glance, this quality of a hypothesis might seem obvious. When your hypothesis is plausible, that means it’s possible given what we know about science and general common sense. However, improbable hypotheses are more common than you might think. 

Imagine you’re studying weight gain and television watching habits. If you hypothesize that people who watch more than  twenty hours of television a week will gain two hundred pounds or more over the course of a year, this might be improbable (though it’s potentially possible). Consequently, c ommon sense can tell us the results of the study before the study even begins.

Improbable hypotheses generally go against  science, as well. Take this hypothesis example: 

“If a person smokes one cigarette a day, then they will have lungs just as healthy as the average person’s.” 

This hypothesis is obviously untrue, as studies have shown again and again that cigarettes negatively affect lung health. You must be careful that your hypotheses do not reflect your own personal opinion more than they do scientifically-supported findings. This plausibility points to the necessity of research before the hypothesis is written to make sure that your hypothesis has not already been disproven.

#2: Defined Concepts

The more advanced you are in your studies, the more likely that the terms you’re using in your hypothesis are specific to a limited set of knowledge. One of the hypothesis testing examples might include the readability of printed text in newspapers, where you might use words like “kerning” and “x-height.” Unless your readers have a background in graphic design, it’s likely that they won’t know what you mean by these terms. Thus, it’s important to either write what they mean in the hypothesis itself or in the report before the hypothesis.

Here’s what we mean. Which of the following sentences makes more sense to the common person?

If the kerning is greater than average, more words will be read per minute.

If the space between letters is greater than average, more words will be read per minute.

For people reading your report that are not experts in typography, simply adding a few more words will be helpful in clarifying exactly what the experiment is all about. It’s always a good idea to make your research and findings as accessible as possible. 

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Good hypotheses ensure that you can observe the results. 

#3: Observability

In order to measure the truth or falsity of your hypothesis, you must be able to see your variables and the way they interact. For instance, if your hypothesis is that the flight patterns of satellites affect the strength of certain television signals, yet you don’t have a telescope to view the satellites or a television to monitor the signal strength, you cannot properly observe your hypothesis and thus cannot continue your study.

Some variables may seem easy to observe, but if you do not have a system of measurement in place, you cannot observe your hypothesis properly. Here’s an example: if you’re experimenting on the effect of healthy food on overall happiness, but you don’t have a way to monitor and measure what “overall happiness” means, your results will not reflect the truth. Monitoring how often someone smiles for a whole day is not reasonably observable, but having the participants state how happy they feel on a scale of one to ten is more observable. 

In writing your hypothesis, always keep in mind how you'll execute the experiment.

#4: Generalizability 

Perhaps you’d like to study what color your best friend wears the most often by observing and documenting the colors she wears each day of the week. This might be fun information for her and you to know, but beyond you two, there aren’t many people who could benefit from this experiment. When you start an experiment, you should note how generalizable your findings may be if they are confirmed. Generalizability is basically how common a particular phenomenon is to other people’s everyday life.

Let’s say you’re asking a question about the health benefits of eating an apple for one day only, you need to realize that the experiment may be too specific to be helpful. It does not help to explain a phenomenon that many people experience. If you find yourself with too specific of a hypothesis, go back to asking the big question: what is it that you want to know, and what do you think will happen between your two variables?

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Hypothesis Testing Examples

We know it can be hard to write a good hypothesis unless you’ve seen some good hypothesis examples. We’ve included four hypothesis examples based on some made-up experiments. Use these as templates or launch pads for coming up with your own hypotheses.

Experiment #1: Students Studying Outside (Writing a Hypothesis)

You are a student at PrepScholar University. When you walk around campus, you notice that, when the temperature is above 60 degrees, more students study in the quad. You want to know when your fellow students are more likely to study outside. With this information, how do you make the best hypothesis possible?

You must remember to make additional observations and do secondary research before writing your hypothesis. In doing so, you notice that no one studies outside when it’s 75 degrees and raining, so this should be included in your experiment. Also, studies done on the topic beforehand suggested that students are more likely to study in temperatures less than 85 degrees. With this in mind, you feel confident that you can identify your variables and write your hypotheses:

If-then: “If the temperature in Fahrenheit is less than 60 degrees, significantly fewer students will study outside.”

Null: “If the temperature in Fahrenheit is less than 60 degrees, the same number of students will study outside as when it is more than 60 degrees.”

These hypotheses are plausible, as the temperatures are reasonably within the bounds of what is possible. The number of people in the quad is also easily observable. It is also not a phenomenon specific to only one person or at one time, but instead can explain a phenomenon for a broader group of people.

To complete this experiment, you pick the month of October to observe the quad. Every day (except on the days where it’s raining)from 3 to 4 PM, when most classes have released for the day, you observe how many people are on the quad. You measure how many people come  and how many leave. You also write down the temperature on the hour. 

After writing down all of your observations and putting them on a graph, you find that the most students study on the quad when it is 70 degrees outside, and that the number of students drops a lot once the temperature reaches 60 degrees or below. In this case, your research report would state that you accept or “failed to reject” your first hypothesis with your findings.

Experiment #2: The Cupcake Store (Forming a Simple Experiment)

Let’s say that you work at a bakery. You specialize in cupcakes, and you make only two colors of frosting: yellow and purple. You want to know what kind of customers are more likely to buy what kind of cupcake, so you set up an experiment. Your independent variable is the customer’s gender, and the dependent variable is the color of the frosting. What is an example of a hypothesis that might answer the question of this study?

Here’s what your hypotheses might look like: 

If-then: “If customers’ gender is female, then they will buy more yellow cupcakes than purple cupcakes.”

Null: “If customers’ gender is female, then they will be just as likely to buy purple cupcakes as yellow cupcakes.”

This is a pretty simple experiment! It passes the test of plausibility (there could easily be a difference), defined concepts (there’s nothing complicated about cupcakes!), observability (both color and gender can be easily observed), and general explanation ( this would potentially help you make better business decisions ).

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Experiment #3: Backyard Bird Feeders (Integrating Multiple Variables and Rejecting the If-Then Hypothesis)

While watching your backyard bird feeder, you realized that different birds come on the days when you change the types of seeds. You decide that you want to see more cardinals in your backyard, so you decide to see what type of food they like the best and set up an experiment. 

However, one morning, you notice that, while some cardinals are present, blue jays are eating out of your backyard feeder filled with millet. You decide that, of all of the other birds, you would like to see the blue jays the least. This means you'll have more than one variable in your hypothesis. Your new hypotheses might look like this: 

If-then: “If sunflower seeds are placed in the bird feeders, then more cardinals will come than blue jays. If millet is placed in the bird feeders, then more blue jays will come than cardinals.”

Null: “If either sunflower seeds or millet are placed in the bird, equal numbers of cardinals and blue jays will come.”

Through simple observation, you actually find that cardinals come as often as blue jays when sunflower seeds or millet is in the bird feeder. In this case, you would reject your “if-then” hypothesis and “fail to reject” your null hypothesis . You cannot accept your first hypothesis, because it’s clearly not true. Instead you found that there was actually no relation between your different variables. Consequently, you would need to run more experiments with different variables to see if the new variables impact the results.

Experiment #4: In-Class Survey (Including an Alternative Hypothesis)

You’re about to give a speech in one of your classes about the importance of paying attention. You want to take this opportunity to test a hypothesis you’ve had for a while: 

If-then: If students sit in the first two rows of the classroom, then they will listen better than students who do not.

Null: If students sit in the first two rows of the classroom, then they will not listen better or worse than students who do not.

You give your speech and then ask your teacher if you can hand out a short survey to the class. On the survey, you’ve included questions about some of the topics you talked about. When you get back the results, you’re surprised to see that not only do the students in the first two rows not pay better attention, but they also scored worse than students in other parts of the classroom! Here, both your if-then and your null hypotheses are not representative of your findings. What do you do?

This is when you reject both your if-then and null hypotheses and instead create an alternative hypothesis . This type of hypothesis is used in the rare circumstance that neither of your hypotheses is able to capture your findings . Now you can use what you’ve learned to draft new hypotheses and test again! 

Key Takeaways: Hypothesis Writing

The more comfortable you become with writing hypotheses, the better they will become. The structure of hypotheses is flexible and may need to be changed depending on what topic you are studying. The most important thing to remember is the purpose of your hypothesis and the difference between the if-then and the null . From there, in forming your hypothesis, you should constantly be asking questions, making observations, doing secondary research, and considering your variables. After you have written your hypothesis, be sure to edit it so that it is plausible, clearly defined, observable, and helpful in explaining a general phenomenon.

Writing a hypothesis is something that everyone, from elementary school children competing in a science fair to professional scientists in a lab, needs to know how to do. Hypotheses are vital in experiments and in properly executing the scientific method . When done correctly, hypotheses will set up your studies for success and help you to understand the world a little better, one experiment at a time.

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What’s Next?

If you’re studying for the science portion of the ACT, there’s definitely a lot you need to know. We’ve got the tools to help, though! Start by checking out our ultimate study guide for the ACT Science subject test. Once you read through that, be sure to download our recommended ACT Science practice tests , since they’re one of the most foolproof ways to improve your score. (And don’t forget to check out our expert guide book , too.)

If you love science and want to major in a scientific field, you should start preparing in high school . Here are the science classes you should take to set yourself up for success.

If you’re trying to think of science experiments you can do for class (or for a science fair!), here’s a list of 37 awesome science experiments you can do at home

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Ashley Sufflé Robinson has a Ph.D. in 19th Century English Literature. As a content writer for PrepScholar, Ashley is passionate about giving college-bound students the in-depth information they need to get into the school of their dreams.

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What is The Null Hypothesis & When Do You Reject The Null Hypothesis

Julia Simkus

Editor at Simply Psychology

BA (Hons) Psychology, Princeton University

Julia Simkus is a graduate of Princeton University with a Bachelor of Arts in Psychology. She is currently studying for a Master's Degree in Counseling for Mental Health and Wellness in September 2023. Julia's research has been published in peer reviewed journals.

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On This Page:

A null hypothesis is a statistical concept suggesting no significant difference or relationship between measured variables. It’s the default assumption unless empirical evidence proves otherwise.

The null hypothesis states no relationship exists between the two variables being studied (i.e., one variable does not affect the other).

The null hypothesis is the statement that a researcher or an investigator wants to disprove.

Testing the null hypothesis can tell you whether your results are due to the effects of manipulating ​ the dependent variable or due to random chance. 

How to Write a Null Hypothesis

Null hypotheses (H0) start as research questions that the investigator rephrases as statements indicating no effect or relationship between the independent and dependent variables.

It is a default position that your research aims to challenge or confirm.

For example, if studying the impact of exercise on weight loss, your null hypothesis might be:

There is no significant difference in weight loss between individuals who exercise daily and those who do not.

Examples of Null Hypotheses

When do we reject the null hypothesis .

We reject the null hypothesis when the data provide strong enough evidence to conclude that it is likely incorrect. This often occurs when the p-value (probability of observing the data given the null hypothesis is true) is below a predetermined significance level.

If the collected data does not meet the expectation of the null hypothesis, a researcher can conclude that the data lacks sufficient evidence to back up the null hypothesis, and thus the null hypothesis is rejected. 

Rejecting the null hypothesis means that a relationship does exist between a set of variables and the effect is statistically significant ( p > 0.05).

If the data collected from the random sample is not statistically significance , then the null hypothesis will be accepted, and the researchers can conclude that there is no relationship between the variables. 

You need to perform a statistical test on your data in order to evaluate how consistent it is with the null hypothesis. A p-value is one statistical measurement used to validate a hypothesis against observed data.

Calculating the p-value is a critical part of null-hypothesis significance testing because it quantifies how strongly the sample data contradicts the null hypothesis.

The level of statistical significance is often expressed as a  p  -value between 0 and 1. The smaller the p-value, the stronger the evidence that you should reject the null hypothesis.

Probability and statistical significance in ab testing. Statistical significance in a b experiments

Usually, a researcher uses a confidence level of 95% or 99% (p-value of 0.05 or 0.01) as general guidelines to decide if you should reject or keep the null.

When your p-value is less than or equal to your significance level, you reject the null hypothesis.

In other words, smaller p-values are taken as stronger evidence against the null hypothesis. Conversely, when the p-value is greater than your significance level, you fail to reject the null hypothesis.

In this case, the sample data provides insufficient data to conclude that the effect exists in the population.

Because you can never know with complete certainty whether there is an effect in the population, your inferences about a population will sometimes be incorrect.

When you incorrectly reject the null hypothesis, it’s called a type I error. When you incorrectly fail to reject it, it’s called a type II error.

Why Do We Never Accept The Null Hypothesis?

The reason we do not say “accept the null” is because we are always assuming the null hypothesis is true and then conducting a study to see if there is evidence against it. And, even if we don’t find evidence against it, a null hypothesis is not accepted.

A lack of evidence only means that you haven’t proven that something exists. It does not prove that something doesn’t exist. 

It is risky to conclude that the null hypothesis is true merely because we did not find evidence to reject it. It is always possible that researchers elsewhere have disproved the null hypothesis, so we cannot accept it as true, but instead, we state that we failed to reject the null. 

One can either reject the null hypothesis, or fail to reject it, but can never accept it.

Why Do We Use The Null Hypothesis?

We can never prove with 100% certainty that a hypothesis is true; We can only collect evidence that supports a theory. However, testing a hypothesis can set the stage for rejecting or accepting this hypothesis within a certain confidence level.

The null hypothesis is useful because it can tell us whether the results of our study are due to random chance or the manipulation of a variable (with a certain level of confidence).

A null hypothesis is rejected if the measured data is significantly unlikely to have occurred and a null hypothesis is accepted if the observed outcome is consistent with the position held by the null hypothesis.

Rejecting the null hypothesis sets the stage for further experimentation to see if a relationship between two variables exists. 

Hypothesis testing is a critical part of the scientific method as it helps decide whether the results of a research study support a particular theory about a given population. Hypothesis testing is a systematic way of backing up researchers’ predictions with statistical analysis.

It helps provide sufficient statistical evidence that either favors or rejects a certain hypothesis about the population parameter. 

Purpose of a Null Hypothesis 

  • The primary purpose of the null hypothesis is to disprove an assumption. 
  • Whether rejected or accepted, the null hypothesis can help further progress a theory in many scientific cases.
  • A null hypothesis can be used to ascertain how consistent the outcomes of multiple studies are.

Do you always need both a Null Hypothesis and an Alternative Hypothesis?

The null (H0) and alternative (Ha or H1) hypotheses are two competing claims that describe the effect of the independent variable on the dependent variable. They are mutually exclusive, which means that only one of the two hypotheses can be true. 

While the null hypothesis states that there is no effect in the population, an alternative hypothesis states that there is statistical significance between two variables. 

The goal of hypothesis testing is to make inferences about a population based on a sample. In order to undertake hypothesis testing, you must express your research hypothesis as a null and alternative hypothesis. Both hypotheses are required to cover every possible outcome of the study. 

What is the difference between a null hypothesis and an alternative hypothesis?

The alternative hypothesis is the complement to the null hypothesis. The null hypothesis states that there is no effect or no relationship between variables, while the alternative hypothesis claims that there is an effect or relationship in the population.

It is the claim that you expect or hope will be true. The null hypothesis and the alternative hypothesis are always mutually exclusive, meaning that only one can be true at a time.

What are some problems with the null hypothesis?

One major problem with the null hypothesis is that researchers typically will assume that accepting the null is a failure of the experiment. However, accepting or rejecting any hypothesis is a positive result. Even if the null is not refuted, the researchers will still learn something new.

Why can a null hypothesis not be accepted?

We can either reject or fail to reject a null hypothesis, but never accept it. If your test fails to detect an effect, this is not proof that the effect doesn’t exist. It just means that your sample did not have enough evidence to conclude that it exists.

We can’t accept a null hypothesis because a lack of evidence does not prove something that does not exist. Instead, we fail to reject it.

Failing to reject the null indicates that the sample did not provide sufficient enough evidence to conclude that an effect exists.

If the p-value is greater than the significance level, then you fail to reject the null hypothesis.

Is a null hypothesis directional or non-directional?

A hypothesis test can either contain an alternative directional hypothesis or a non-directional alternative hypothesis. A directional hypothesis is one that contains the less than (“<“) or greater than (“>”) sign.

A nondirectional hypothesis contains the not equal sign (“≠”).  However, a null hypothesis is neither directional nor non-directional.

A null hypothesis is a prediction that there will be no change, relationship, or difference between two variables.

The directional hypothesis or nondirectional hypothesis would then be considered alternative hypotheses to the null hypothesis.

Gill, J. (1999). The insignificance of null hypothesis significance testing.  Political research quarterly ,  52 (3), 647-674.

Krueger, J. (2001). Null hypothesis significance testing: On the survival of a flawed method.  American Psychologist ,  56 (1), 16.

Masson, M. E. (2011). A tutorial on a practical Bayesian alternative to null-hypothesis significance testing.  Behavior research methods ,  43 , 679-690.

Nickerson, R. S. (2000). Null hypothesis significance testing: a review of an old and continuing controversy.  Psychological methods ,  5 (2), 241.

Rozeboom, W. W. (1960). The fallacy of the null-hypothesis significance test.  Psychological bulletin ,  57 (5), 416.

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Home » What is a Hypothesis – Types, Examples and Writing Guide

What is a Hypothesis – Types, Examples and Writing Guide

Table of Contents

What is a Hypothesis

Definition:

Hypothesis is an educated guess or proposed explanation for a phenomenon, based on some initial observations or data. It is a tentative statement that can be tested and potentially proven or disproven through further investigation and experimentation.

Hypothesis is often used in scientific research to guide the design of experiments and the collection and analysis of data. It is an essential element of the scientific method, as it allows researchers to make predictions about the outcome of their experiments and to test those predictions to determine their accuracy.

Types of Hypothesis

Types of Hypothesis are as follows:

Research Hypothesis

A research hypothesis is a statement that predicts a relationship between variables. It is usually formulated as a specific statement that can be tested through research, and it is often used in scientific research to guide the design of experiments.

Null Hypothesis

The null hypothesis is a statement that assumes there is no significant difference or relationship between variables. It is often used as a starting point for testing the research hypothesis, and if the results of the study reject the null hypothesis, it suggests that there is a significant difference or relationship between variables.

Alternative Hypothesis

An alternative hypothesis is a statement that assumes there is a significant difference or relationship between variables. It is often used as an alternative to the null hypothesis and is tested against the null hypothesis to determine which statement is more accurate.

Directional Hypothesis

A directional hypothesis is a statement that predicts the direction of the relationship between variables. For example, a researcher might predict that increasing the amount of exercise will result in a decrease in body weight.

Non-directional Hypothesis

A non-directional hypothesis is a statement that predicts the relationship between variables but does not specify the direction. For example, a researcher might predict that there is a relationship between the amount of exercise and body weight, but they do not specify whether increasing or decreasing exercise will affect body weight.

Statistical Hypothesis

A statistical hypothesis is a statement that assumes a particular statistical model or distribution for the data. It is often used in statistical analysis to test the significance of a particular result.

Composite Hypothesis

A composite hypothesis is a statement that assumes more than one condition or outcome. It can be divided into several sub-hypotheses, each of which represents a different possible outcome.

Empirical Hypothesis

An empirical hypothesis is a statement that is based on observed phenomena or data. It is often used in scientific research to develop theories or models that explain the observed phenomena.

Simple Hypothesis

A simple hypothesis is a statement that assumes only one outcome or condition. It is often used in scientific research to test a single variable or factor.

Complex Hypothesis

A complex hypothesis is a statement that assumes multiple outcomes or conditions. It is often used in scientific research to test the effects of multiple variables or factors on a particular outcome.

Applications of Hypothesis

Hypotheses are used in various fields to guide research and make predictions about the outcomes of experiments or observations. Here are some examples of how hypotheses are applied in different fields:

  • Science : In scientific research, hypotheses are used to test the validity of theories and models that explain natural phenomena. For example, a hypothesis might be formulated to test the effects of a particular variable on a natural system, such as the effects of climate change on an ecosystem.
  • Medicine : In medical research, hypotheses are used to test the effectiveness of treatments and therapies for specific conditions. For example, a hypothesis might be formulated to test the effects of a new drug on a particular disease.
  • Psychology : In psychology, hypotheses are used to test theories and models of human behavior and cognition. For example, a hypothesis might be formulated to test the effects of a particular stimulus on the brain or behavior.
  • Sociology : In sociology, hypotheses are used to test theories and models of social phenomena, such as the effects of social structures or institutions on human behavior. For example, a hypothesis might be formulated to test the effects of income inequality on crime rates.
  • Business : In business research, hypotheses are used to test the validity of theories and models that explain business phenomena, such as consumer behavior or market trends. For example, a hypothesis might be formulated to test the effects of a new marketing campaign on consumer buying behavior.
  • Engineering : In engineering, hypotheses are used to test the effectiveness of new technologies or designs. For example, a hypothesis might be formulated to test the efficiency of a new solar panel design.

How to write a Hypothesis

Here are the steps to follow when writing a hypothesis:

Identify the Research Question

The first step is to identify the research question that you want to answer through your study. This question should be clear, specific, and focused. It should be something that can be investigated empirically and that has some relevance or significance in the field.

Conduct a Literature Review

Before writing your hypothesis, it’s essential to conduct a thorough literature review to understand what is already known about the topic. This will help you to identify the research gap and formulate a hypothesis that builds on existing knowledge.

Determine the Variables

The next step is to identify the variables involved in the research question. A variable is any characteristic or factor that can vary or change. There are two types of variables: independent and dependent. The independent variable is the one that is manipulated or changed by the researcher, while the dependent variable is the one that is measured or observed as a result of the independent variable.

Formulate the Hypothesis

Based on the research question and the variables involved, you can now formulate your hypothesis. A hypothesis should be a clear and concise statement that predicts the relationship between the variables. It should be testable through empirical research and based on existing theory or evidence.

Write the Null Hypothesis

The null hypothesis is the opposite of the alternative hypothesis, which is the hypothesis that you are testing. The null hypothesis states that there is no significant difference or relationship between the variables. It is important to write the null hypothesis because it allows you to compare your results with what would be expected by chance.

Refine the Hypothesis

After formulating the hypothesis, it’s important to refine it and make it more precise. This may involve clarifying the variables, specifying the direction of the relationship, or making the hypothesis more testable.

Examples of Hypothesis

Here are a few examples of hypotheses in different fields:

  • Psychology : “Increased exposure to violent video games leads to increased aggressive behavior in adolescents.”
  • Biology : “Higher levels of carbon dioxide in the atmosphere will lead to increased plant growth.”
  • Sociology : “Individuals who grow up in households with higher socioeconomic status will have higher levels of education and income as adults.”
  • Education : “Implementing a new teaching method will result in higher student achievement scores.”
  • Marketing : “Customers who receive a personalized email will be more likely to make a purchase than those who receive a generic email.”
  • Physics : “An increase in temperature will cause an increase in the volume of a gas, assuming all other variables remain constant.”
  • Medicine : “Consuming a diet high in saturated fats will increase the risk of developing heart disease.”

Purpose of Hypothesis

The purpose of a hypothesis is to provide a testable explanation for an observed phenomenon or a prediction of a future outcome based on existing knowledge or theories. A hypothesis is an essential part of the scientific method and helps to guide the research process by providing a clear focus for investigation. It enables scientists to design experiments or studies to gather evidence and data that can support or refute the proposed explanation or prediction.

The formulation of a hypothesis is based on existing knowledge, observations, and theories, and it should be specific, testable, and falsifiable. A specific hypothesis helps to define the research question, which is important in the research process as it guides the selection of an appropriate research design and methodology. Testability of the hypothesis means that it can be proven or disproven through empirical data collection and analysis. Falsifiability means that the hypothesis should be formulated in such a way that it can be proven wrong if it is incorrect.

In addition to guiding the research process, the testing of hypotheses can lead to new discoveries and advancements in scientific knowledge. When a hypothesis is supported by the data, it can be used to develop new theories or models to explain the observed phenomenon. When a hypothesis is not supported by the data, it can help to refine existing theories or prompt the development of new hypotheses to explain the phenomenon.

When to use Hypothesis

Here are some common situations in which hypotheses are used:

  • In scientific research , hypotheses are used to guide the design of experiments and to help researchers make predictions about the outcomes of those experiments.
  • In social science research , hypotheses are used to test theories about human behavior, social relationships, and other phenomena.
  • I n business , hypotheses can be used to guide decisions about marketing, product development, and other areas. For example, a hypothesis might be that a new product will sell well in a particular market, and this hypothesis can be tested through market research.

Characteristics of Hypothesis

Here are some common characteristics of a hypothesis:

  • Testable : A hypothesis must be able to be tested through observation or experimentation. This means that it must be possible to collect data that will either support or refute the hypothesis.
  • Falsifiable : A hypothesis must be able to be proven false if it is not supported by the data. If a hypothesis cannot be falsified, then it is not a scientific hypothesis.
  • Clear and concise : A hypothesis should be stated in a clear and concise manner so that it can be easily understood and tested.
  • Based on existing knowledge : A hypothesis should be based on existing knowledge and research in the field. It should not be based on personal beliefs or opinions.
  • Specific : A hypothesis should be specific in terms of the variables being tested and the predicted outcome. This will help to ensure that the research is focused and well-designed.
  • Tentative: A hypothesis is a tentative statement or assumption that requires further testing and evidence to be confirmed or refuted. It is not a final conclusion or assertion.
  • Relevant : A hypothesis should be relevant to the research question or problem being studied. It should address a gap in knowledge or provide a new perspective on the issue.

Advantages of Hypothesis

Hypotheses have several advantages in scientific research and experimentation:

  • Guides research: A hypothesis provides a clear and specific direction for research. It helps to focus the research question, select appropriate methods and variables, and interpret the results.
  • Predictive powe r: A hypothesis makes predictions about the outcome of research, which can be tested through experimentation. This allows researchers to evaluate the validity of the hypothesis and make new discoveries.
  • Facilitates communication: A hypothesis provides a common language and framework for scientists to communicate with one another about their research. This helps to facilitate the exchange of ideas and promotes collaboration.
  • Efficient use of resources: A hypothesis helps researchers to use their time, resources, and funding efficiently by directing them towards specific research questions and methods that are most likely to yield results.
  • Provides a basis for further research: A hypothesis that is supported by data provides a basis for further research and exploration. It can lead to new hypotheses, theories, and discoveries.
  • Increases objectivity: A hypothesis can help to increase objectivity in research by providing a clear and specific framework for testing and interpreting results. This can reduce bias and increase the reliability of research findings.

Limitations of Hypothesis

Some Limitations of the Hypothesis are as follows:

  • Limited to observable phenomena: Hypotheses are limited to observable phenomena and cannot account for unobservable or intangible factors. This means that some research questions may not be amenable to hypothesis testing.
  • May be inaccurate or incomplete: Hypotheses are based on existing knowledge and research, which may be incomplete or inaccurate. This can lead to flawed hypotheses and erroneous conclusions.
  • May be biased: Hypotheses may be biased by the researcher’s own beliefs, values, or assumptions. This can lead to selective interpretation of data and a lack of objectivity in research.
  • Cannot prove causation: A hypothesis can only show a correlation between variables, but it cannot prove causation. This requires further experimentation and analysis.
  • Limited to specific contexts: Hypotheses are limited to specific contexts and may not be generalizable to other situations or populations. This means that results may not be applicable in other contexts or may require further testing.
  • May be affected by chance : Hypotheses may be affected by chance or random variation, which can obscure or distort the true relationship between variables.

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Hypothesis testing involves formulating assumptions about population parameters based on sample statistics and rigorously evaluating these assumptions against empirical evidence. This article sheds light on the significance of hypothesis testing and the critical steps involved in the process.

What is Hypothesis Testing?

Hypothesis testing is a statistical method that is used to make a statistical decision using experimental data. Hypothesis testing is basically an assumption that we make about a population parameter. It evaluates two mutually exclusive statements about a population to determine which statement is best supported by the sample data. 

Example: You say an average height in the class is 30 or a boy is taller than a girl. All of these is an assumption that we are assuming, and we need some statistical way to prove these. We need some mathematical conclusion whatever we are assuming is true.

Defining Hypotheses

\mu

Key Terms of Hypothesis Testing

\alpha

  • P-value: The P value , or calculated probability, is the probability of finding the observed/extreme results when the null hypothesis(H0) of a study-given problem is true. If your P-value is less than the chosen significance level then you reject the null hypothesis i.e. accept that your sample claims to support the alternative hypothesis.
  • Test Statistic: The test statistic is a numerical value calculated from sample data during a hypothesis test, used to determine whether to reject the null hypothesis. It is compared to a critical value or p-value to make decisions about the statistical significance of the observed results.
  • Critical value : The critical value in statistics is a threshold or cutoff point used to determine whether to reject the null hypothesis in a hypothesis test.
  • Degrees of freedom: Degrees of freedom are associated with the variability or freedom one has in estimating a parameter. The degrees of freedom are related to the sample size and determine the shape.

Why do we use Hypothesis Testing?

Hypothesis testing is an important procedure in statistics. Hypothesis testing evaluates two mutually exclusive population statements to determine which statement is most supported by sample data. When we say that the findings are statistically significant, thanks to hypothesis testing. 

One-Tailed and Two-Tailed Test

One tailed test focuses on one direction, either greater than or less than a specified value. We use a one-tailed test when there is a clear directional expectation based on prior knowledge or theory. The critical region is located on only one side of the distribution curve. If the sample falls into this critical region, the null hypothesis is rejected in favor of the alternative hypothesis.

One-Tailed Test

There are two types of one-tailed test:

\mu \geq 50

Two-Tailed Test

A two-tailed test considers both directions, greater than and less than a specified value.We use a two-tailed test when there is no specific directional expectation, and want to detect any significant difference.

\mu =

What are Type 1 and Type 2 errors in Hypothesis Testing?

In hypothesis testing, Type I and Type II errors are two possible errors that researchers can make when drawing conclusions about a population based on a sample of data. These errors are associated with the decisions made regarding the null hypothesis and the alternative hypothesis.

\alpha

How does Hypothesis Testing work?

Step 1: define null and alternative hypothesis.

H_0

We first identify the problem about which we want to make an assumption keeping in mind that our assumption should be contradictory to one another, assuming Normally distributed data.

Step 2 – Choose significance level

\alpha

Step 3 – Collect and Analyze data.

Gather relevant data through observation or experimentation. Analyze the data using appropriate statistical methods to obtain a test statistic.

Step 4-Calculate Test Statistic

The data for the tests are evaluated in this step we look for various scores based on the characteristics of data. The choice of the test statistic depends on the type of hypothesis test being conducted.

There are various hypothesis tests, each appropriate for various goal to calculate our test. This could be a Z-test , Chi-square , T-test , and so on.

  • Z-test : If population means and standard deviations are known. Z-statistic is commonly used.
  • t-test : If population standard deviations are unknown. and sample size is small than t-test statistic is more appropriate.
  • Chi-square test : Chi-square test is used for categorical data or for testing independence in contingency tables
  • F-test : F-test is often used in analysis of variance (ANOVA) to compare variances or test the equality of means across multiple groups.

We have a smaller dataset, So, T-test is more appropriate to test our hypothesis.

T-statistic is a measure of the difference between the means of two groups relative to the variability within each group. It is calculated as the difference between the sample means divided by the standard error of the difference. It is also known as the t-value or t-score.

Step 5 – Comparing Test Statistic:

In this stage, we decide where we should accept the null hypothesis or reject the null hypothesis. There are two ways to decide where we should accept or reject the null hypothesis.

Method A: Using Crtical values

Comparing the test statistic and tabulated critical value we have,

  • If Test Statistic>Critical Value: Reject the null hypothesis.
  • If Test Statistic≤Critical Value: Fail to reject the null hypothesis.

Note: Critical values are predetermined threshold values that are used to make a decision in hypothesis testing. To determine critical values for hypothesis testing, we typically refer to a statistical distribution table , such as the normal distribution or t-distribution tables based on.

Method B: Using P-values

We can also come to an conclusion using the p-value,

p\leq\alpha

Note : The p-value is the probability of obtaining a test statistic as extreme as, or more extreme than, the one observed in the sample, assuming the null hypothesis is true. To determine p-value for hypothesis testing, we typically refer to a statistical distribution table , such as the normal distribution or t-distribution tables based on.

Step 7- Interpret the Results

At last, we can conclude our experiment using method A or B.

Calculating test statistic

To validate our hypothesis about a population parameter we use statistical functions . We use the z-score, p-value, and level of significance(alpha) to make evidence for our hypothesis for normally distributed data .

1. Z-statistics:

When population means and standard deviations are known.

z = \frac{\bar{x} - \mu}{\frac{\sigma}{\sqrt{n}}}

  • μ represents the population mean, 
  • σ is the standard deviation
  • and n is the size of the sample.

2. T-Statistics

T test is used when n<30,

t-statistic calculation is given by:

t=\frac{x̄-μ}{s/\sqrt{n}}

  • t = t-score,
  • x̄ = sample mean
  • μ = population mean,
  • s = standard deviation of the sample,
  • n = sample size

3. Chi-Square Test

Chi-Square Test for Independence categorical Data (Non-normally distributed) using:

\chi^2 = \sum \frac{(O_{ij} - E_{ij})^2}{E_{ij}}

  • i,j are the rows and columns index respectively.

E_{ij}

Real life Hypothesis Testing example

Let’s examine hypothesis testing using two real life situations,

Case A: D oes a New Drug Affect Blood Pressure?

Imagine a pharmaceutical company has developed a new drug that they believe can effectively lower blood pressure in patients with hypertension. Before bringing the drug to market, they need to conduct a study to assess its impact on blood pressure.

  • Before Treatment: 120, 122, 118, 130, 125, 128, 115, 121, 123, 119
  • After Treatment: 115, 120, 112, 128, 122, 125, 110, 117, 119, 114

Step 1 : Define the Hypothesis

  • Null Hypothesis : (H 0 )The new drug has no effect on blood pressure.
  • Alternate Hypothesis : (H 1 )The new drug has an effect on blood pressure.

Step 2: Define the Significance level

Let’s consider the Significance level at 0.05, indicating rejection of the null hypothesis.

If the evidence suggests less than a 5% chance of observing the results due to random variation.

Step 3 : Compute the test statistic

Using paired T-test analyze the data to obtain a test statistic and a p-value.

The test statistic (e.g., T-statistic) is calculated based on the differences between blood pressure measurements before and after treatment.

t = m/(s/√n)

  • m  = mean of the difference i.e X after, X before
  • s  = standard deviation of the difference (d) i.e d i ​= X after, i ​− X before,
  • n  = sample size,

then, m= -3.9, s= 1.8 and n= 10

we, calculate the , T-statistic = -9 based on the formula for paired t test

Step 4: Find the p-value

The calculated t-statistic is -9 and degrees of freedom df = 9, you can find the p-value using statistical software or a t-distribution table.

thus, p-value = 8.538051223166285e-06

Step 5: Result

  • If the p-value is less than or equal to 0.05, the researchers reject the null hypothesis.
  • If the p-value is greater than 0.05, they fail to reject the null hypothesis.

Conclusion: Since the p-value (8.538051223166285e-06) is less than the significance level (0.05), the researchers reject the null hypothesis. There is statistically significant evidence that the average blood pressure before and after treatment with the new drug is different.

Python Implementation of Hypothesis Testing

Let’s create hypothesis testing with python, where we are testing whether a new drug affects blood pressure. For this example, we will use a paired T-test. We’ll use the scipy.stats library for the T-test.

Scipy is a mathematical library in Python that is mostly used for mathematical equations and computations.

We will implement our first real life problem via python,

In the above example, given the T-statistic of approximately -9 and an extremely small p-value, the results indicate a strong case to reject the null hypothesis at a significance level of 0.05. 

  • The results suggest that the new drug, treatment, or intervention has a significant effect on lowering blood pressure.
  • The negative T-statistic indicates that the mean blood pressure after treatment is significantly lower than the assumed population mean before treatment.

Case B : Cholesterol level in a population

Data: A sample of 25 individuals is taken, and their cholesterol levels are measured.

Cholesterol Levels (mg/dL): 205, 198, 210, 190, 215, 205, 200, 192, 198, 205, 198, 202, 208, 200, 205, 198, 205, 210, 192, 205, 198, 205, 210, 192, 205.

Populations Mean = 200

Population Standard Deviation (σ): 5 mg/dL(given for this problem)

Step 1: Define the Hypothesis

  • Null Hypothesis (H 0 ): The average cholesterol level in a population is 200 mg/dL.
  • Alternate Hypothesis (H 1 ): The average cholesterol level in a population is different from 200 mg/dL.

As the direction of deviation is not given , we assume a two-tailed test, and based on a normal distribution table, the critical values for a significance level of 0.05 (two-tailed) can be calculated through the z-table and are approximately -1.96 and 1.96.

(203.8 - 200) / (5 \div \sqrt{25})

Step 4: Result

Since the absolute value of the test statistic (2.04) is greater than the critical value (1.96), we reject the null hypothesis. And conclude that, there is statistically significant evidence that the average cholesterol level in the population is different from 200 mg/dL

Limitations of Hypothesis Testing

  • Although a useful technique, hypothesis testing does not offer a comprehensive grasp of the topic being studied. Without fully reflecting the intricacy or whole context of the phenomena, it concentrates on certain hypotheses and statistical significance.
  • The accuracy of hypothesis testing results is contingent on the quality of available data and the appropriateness of statistical methods used. Inaccurate data or poorly formulated hypotheses can lead to incorrect conclusions.
  • Relying solely on hypothesis testing may cause analysts to overlook significant patterns or relationships in the data that are not captured by the specific hypotheses being tested. This limitation underscores the importance of complimenting hypothesis testing with other analytical approaches.

Hypothesis testing stands as a cornerstone in statistical analysis, enabling data scientists to navigate uncertainties and draw credible inferences from sample data. By systematically defining null and alternative hypotheses, choosing significance levels, and leveraging statistical tests, researchers can assess the validity of their assumptions. The article also elucidates the critical distinction between Type I and Type II errors, providing a comprehensive understanding of the nuanced decision-making process inherent in hypothesis testing. The real-life example of testing a new drug’s effect on blood pressure using a paired T-test showcases the practical application of these principles, underscoring the importance of statistical rigor in data-driven decision-making.

Frequently Asked Questions (FAQs)

1. what are the 3 types of hypothesis test.

There are three types of hypothesis tests: right-tailed, left-tailed, and two-tailed. Right-tailed tests assess if a parameter is greater, left-tailed if lesser. Two-tailed tests check for non-directional differences, greater or lesser.

2.What are the 4 components of hypothesis testing?

Null Hypothesis ( ): No effect or difference exists. Alternative Hypothesis ( ): An effect or difference exists. Significance Level ( ): Risk of rejecting null hypothesis when it’s true (Type I error). Test Statistic: Numerical value representing observed evidence against null hypothesis.

3.What is hypothesis testing in ML?

Statistical method to evaluate the performance and validity of machine learning models. Tests specific hypotheses about model behavior, like whether features influence predictions or if a model generalizes well to unseen data.

4.What is the difference between Pytest and hypothesis in Python?

Pytest purposes general testing framework for Python code while Hypothesis is a Property-based testing framework for Python, focusing on generating test cases based on specified properties of the code.

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Research, reproducibility and reliability. These three words are key when it comes to good science. As scientists, we strive to prove that our results are significantly different. My colleague often wished for a “Journal of Negative Results”, one which published the experiments that didn’t work. This would save her time trying experiments that other researchers had already discovered to have negative results. Sadly, we often do not publish our “non-significantly” different results and we endeavor to find a significant difference in our experiments for our work to be publishable.

This is where researchers sometimes go wrong. They confuse basic statistical rules, that make their results look reproducible and more significant. However, often these methods are not statistically correct . Make sure you are not making any of the following statistical errors in your manuscript:

Common Statistical Errors

Control group.

When studying the effect of an intervention at multiple time points, it is crucial to have a control group. Many other variables creep into experiments that you may not have thought of, such as experimenters becoming accustomed to the study and reporting more efficiently than when they started. Subjects also learn as they partake in an experiment and become more efficient at tasks over time. This needs to be controlled. Control groups need to be the same size as the experimental groups and they need to be sampled randomly at the same time as the experimental groups.

Comparing Two Effects Without Comparing Them Directly

This happens when two effects are compared to a control group, but not to each other. For example, you have two groups and you want to compare two different interventions. It may look as if intervention A had a greater effect than intervention B, but your statistical analysis proves they are not significantly different. However, you find that each intervention is significantly different to the control group. The only conclusion you can draw is that both interventions showed a statistical difference compared to the control group. You cannot state that they were statistically different to each other.

Number of Observations vs Number of Subjects

The more repetitions you have in your experiments, the more reliable your statistical analysis. Don’t be tempted to artificially inflate your units of analysis by using the number of observations rather than the number of subjects that you tested. To check yourself, look at the aim of your experiment. If you aimed to test the effect of an intervention on a group, then the unit of analysis is the number of subjects.

Dealing with Outliers

You may think you should remove extreme outliers because you assume something went wrong with that data point. You may think it is not possible for one or two of your data points to be so different from your other observations. However, the outliers may be genuine observations. If you do remove a datapoint, you must mention it as well as justify it with good reasons. This kind of transparency is essential for good science.

Small Sample Sizes

In cases where samples are rare and therefore limited, only large effects will be detectable statistically. In addition, a genuine effect may not be detected. If you find yourself in this situation, you may be able to get around the small sample size by performing replications within and between samples and including enough controls.

Double Dipping

You complete a set of experiments where you compare the effect of an intervention before and after that intervention. You find the results are not significantly different between the groups. However, during your analysis you notice a change in behavior of your samples. You are tempted to sub-divide your groups and do away with the baseline data to prove your assumption. This is known a circular analysis, or double dipping, and could merely be an observation of background noise. In order to prove your assumption, you would have to re-run the experiment with newly defined analysis criteria and the appropriate controls.

This “flexibility of analysis” occurs when researchers artificially increase the probability of achieving a significant p-value by adding covariates, excluding subjects, or switching outcome parameters. These may work in giving you a statistically significant result, because the more tests you run, the more likely you’ll find a false positive result. This is how probability works. If you find yourself in this position, rather be transparent and use your existing data to justify additional research.

Failing to Correct for Multiple Comparisons

Multiple comparisons occur when two groups are compared using more than one variable. For example, you study the effect of a drug on volunteers and measure the result of multiple symptoms. In these types of tests, the larger the number of factors, the more likely a false-positive for one of the variables is probable. Ensure you correct for multiple comparisons of a group with a large set of variables using the relevant statistics for your experiment.

Over-Interpretation of Non-Significant Results

The significance of the p-value of 0.05 has been described as arbitrary. It only confirms the high probability of a result occurring consistently within a population. For the p-value to be meaningful, its needs to be reported with the effect size and the 95 % confidence interval. This will enable readers to understand the scale of the effect and decide whether the results can be extrapolated to the relevant population, based on the results of the sample population.

Confusing Correlation and Causation

The relationship between two variables is often analyzed using correlations. If a correlation is found between the two variables, it does not mean that one effect causes another. Further tests should be performed to prove causation.

Considerations

A few tips to help you:

Your statistical analysis aims to tell a story of an intervention or effect that you are researching. You need to ensure you have all the parts of the story for you to draw meaningful conclusions. Which common statistical errors have you come across when reading journal articles?

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7 Common Errors in Writing + How to Fix Them (With Examples)

7 Common Errors in Writing + How to Fix Them (With Examples)

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what is error in writing hypothesis

Yona Schnitzer

We’ve all made errors in our writing — from simple spelling and grammar mistakes to larger structural issues. While we’ll likely make mistakes again (we’re human, after all!), the good news is that we can learn to spot them and keep our writing as polished as possible. 

But to do that, we have to identify them first. 

That’s where I come in. As a professional writer, I’ve made — and corrected — plenty of writing mistakes over the years. 

In this blog post, I share seven common errors in writing and explain how to fix them using handy before-and-after examples. 

what is error in writing hypothesis

What are the different types of writing errors? 

Writing errors can be divided into several categories, including: 

  • Spelling errors: These occur when words are misspelled — e.g., “bisness” instead of “business.”
  • Grammar errors : These are mistakes in sentence form or structure, such as writing an incomplete sentence like “Because of the snow.”
  • Punctuation errors: These involve using punctuation incorrectly or not using it at all — like writing “Let’s eat Dad” instead of “Let’s eat, Dad.” 
  • Structure errors: These occur when the ideas in a piece of writing are unclear, not well-organized, or repetitive.
  • Style errors: These happen when a writer doesn’t follow language and style rules — e.g., using passive instead of active voice.

7 common errors in writing (and how to fix them)

Now that you understand the categories of writing mistakes, we can look at specific examples. Below, I cover seven common errors and how to fix them. 

1. Run-on sentences 

A run-on sentence is a grammatical error that occurs when two independent clauses (complete thoughts) aren’t properly joined. This kind of sentence makes it difficult to see where one idea ends and the other begins . 

Two common types of run-on sentences are fused sentences and comma splices. 

Fused sentences

A fused sentence joins two independent clauses without using a punctuation mark or coordinating conjunction (e.g., “and” or “but”), as seen below: 

❌ Kel loves orange soda it’s his favorite drink. 

You’d correct this sentence by inserting a semicolon between the two complete thoughts: 

✅ Kel loves orange soda ; it’s his favorite drink.

Another option is to use a period to divide the clauses into two sentences:

✅ Kel loves orange soda . It’s his favorite drink. 

Comma splices 

A comma splice uses a comma between two independent clauses but forgets the necessary coordinating conjunction . 

For example: 

❌ Margaret went to Lenox Mall , she bought a new dress. 

To correct this sentence, simply add a conjunction after the comma. 

✅ Margaret went to Lenox Mall, and she bought a new dress. 

2. Passive voice 

Passive voice occurs when the receiver of the action (object) becomes the focus of the sentence rather than the one performing the action (subject). 

Passive voice:

The decision was made by the jury. 

Here, the focus is on the decision being made (object) instead of the jury making the decision (subject). As a result, the reader spends more time processing who is doing what . 

To rewrite this sentence in active voice , put the subject at the front of the sentence. That way, the jury becomes the focus and performs the action, as shown here: 

Active voice:

The jury made the decision.

This sentence is easier to understand because it follows a straightforward structure: subject (“the jury”) + action (“made”) + receiver of the action (“the decision”). 

3. Subject-verb disagreement

Subject-verb agreement means that a singular subject (one person, place, or thing) takes a singular verb , and a plural subject (two or more people, places, and things) takes a plural verb . 

For example, in the sentence “ Nancy eats popcorn,” “Nancy” is a singular subject, and “eats” is a singular verb. 

Meanwhile, “ Nancy and Rodney eat popcorn” pairs a plural verb (“eat”) with a plural subject (“Nancy and Rodney”). 

Notice that when you use a third-person singular subject (e.g., “Nancy,” “he,” “she,” and “it”) in the present tense (the tense for action happening now), you add an “s” at the end of the verb . 

Ignoring this rule results in subject-verb disagreement, meaning the subject and its verb don’t match. 

For example:

❌ Nancy eat buttered popcorn. 
✅ Nancy eats buttered popcorn.

That said, you don’t add an “s” to the end of the verb when using the subjects “I” (singular), “we” (plural), and “they” (plural), as this would also lead to subject-verb disagreement. 

❌ I eats buttered popcorn. 
❌ We eats buttered popcorn. 
❌ They eats buttered popcorn. 

To correct the error, simply remove the “s” from the end of “prefer” for these subjects: 

✅ I eat buttered popcorn. 
✅ We eat buttered popcorn. 
✅ They eat buttered popcorn. 

AI tip: Wordtune’s Editor can identify subject-verb disagreement and offer suggestions on how to correct it.

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4. Incorrect word choice

Many writers confuse one word for another or misuse words in their work. This often happens with homophones — words that sound the same but have different meanings or spellings, such as “weather” and “whether.”

❌ The whether is lovely today.

The word “whether” means a choice between alternatives or indicates uncertainty. However, in this sentence, it’s used like the homophone “weather,” which refers to the state of or changes in the air or atmosphere (e.g., sun, rain, etc.)

Therefore, the word “weather” is the correct choice for this sentence:

✅ The weather is lovely today.

Now, let’s reverse the context: 

❌ I don’t know weather I should read a book or watch a movie. 

The word “weather” is incorrect here because the sentence focuses on the speaker’s inability to choose between two options: read a book or watch a movie. 

Therefore, you’d use “whether”:

✅ I don’t know whether I should read a book or watch a movie. 

Pro tip: The best way to avoid incorrect word choice is to use a memory device. For example, you could remember that “we a ther” refers to the “ a ir” or “ a tmosphere” because all three words contain the letter “ a .”

5. Vague pronouns

A vague pronoun is a pronoun (e.g., “he,” “she,” or “it”) with more than one antecedent (the person, place, or thing that a pronoun refers to). Using vague pronouns confuses readers because they don’t know who or what you’re referencing. 

For instance, this sentence about Mitchell and Mike (antecedents) doesn’t clarify who the pronoun “he” refers to: 

❌ Mitchell and Mike went to the football game after he finished work. (Who finished work, Mitchell or Mike?)

To fix this issue, you could restate the subject (for instance, “Mike”) so readers know who you’re talking about:

✅ Mitchell and Mike went to the football game after Mike finished work.

A less redundant option would be to rewrite the sentence so the pronoun (“he”) is closer to the subject it replaces (“Mike”): 

✅ After Mike finished work, he and Mitchell went to the football game. 

6. Dangling modifiers 

A modifier is a word, such as an adjective, or phrase that describes another part of the sentence . 

For example, in the sentence “Lex is an English professor,” the word “English” modifies the word “professor.” Additionally, in the sentence “After watching TV, Hunter went to sleep,” the phrase “After watching TV” modifies the word “Hunter.”  

However, when a modifier describes the wrong thing because the intended subject isn’t in the right place, you get a dangling modifier. 

❌ While standing in the freezing outdoors , thoughts of hot chocolate consumed Louise . 

In this sentence, the phrase “while standing in the freezing outdoors” modifies “thoughts of hot chocolate.” However, that’s incorrect because “thoughts of hot chocolate” don’t stand outdoors.

Instead, “While standing in the freezing outdoors” is supposed to modify the person having the thoughts — the intended subject, Louise.

To correct this error, place the subject being modified immediately after the modifying phrase :

✅ While standing in the freezing outdoors , Louise was consumed with thoughts of hot chocolate. 

Now, the modifier describes what it intended to all along: the person thinking about hot chocolate, not the thoughts themselves. 

7. Missing or misplaced apostrophes

An apostrophe is a punctuation mark that forms a contraction (e.g., turning “you are” into “you’re”). It’s also used to indicate ownership . For instance, the apostrophe in the sentence “Lily’s cell phone went off in class” shows that Lily owns the phone. 

Writers often forget to include apostrophes, or they use them in the wrong place. 

The following sentence is an example of a missing apostrophe :

❌ Its hot outside.

This example uses a possessive pronoun (its), but the context of the sentence doesn’t indicate ownership. Instead, the sentence is trying to say that “it is” hot outside. 

Therefore, we need to add an apostrophe to create a contraction for “it is”:

✅ It ’ s hot outside. 

As for misplaced apostrophes , writers often make this error when dealing with plural possessive nouns. These nouns indicate that something belongs to more than one person — e.g., “the teachers’ lounge” belongs to more than one teacher. 

❌ Lane heard laughter coming from the girl ’ s locker room.

Here, the apostrophe is misplaced because the locker room doesn’t belong to only one girl (singular noun). It belongs to a group of girls (plural noun). 

So, we’d correct the sentence by adding an apostrophe after the letter “s” to make “girls” a plural possessive noun: 

✅ Lane heard laughter coming from the girls ’ locker room.

Common writing errors include run-on sentences, passive voice, subject-verb disagreement, incorrect word choice, and dangling modifiers. Many writers make these mistakes, and the first step in correcting them is knowing what they are and when they happen.

By using the information and tips in this guide, you can better understand these errors and how to fix them in your writing. 

For even more actionable advice on improving your work, read our guides on writing better sentences and making your writing flow smoothly . 

What are grammar errors in writing?

Grammar errors in writing are mistakes writers make when constructing sentences. These mistakes include subject-verb disagreement (e.g., “I eats” instead of “I eat”), run-on sentences (e.g., “Lisa was thirsty she drank three water bottles”), and inconsistent verb tense (e.g., shifting from past to present tense). 

What are common errors in writing essays?

Common errors in writing essays are grammar, spelling, and punctuation mistakes. These include using dangling modifiers, spelling words incorrectly, and forgetting to use an apostrophe to form a contraction (e.g., writing “its” for “it is” instead of “it’s”). Essays may also feature structural errors, such as disorganized sections or redundant arguments.

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https://educationhub.blog.gov.uk/2024/05/16/new-rshe-guidance-what-it-means-for-sex-education-lessons-in-schools/

New RSHE guidance: What it means for sex education lessons in schools

RSHE guidance

R elationships, Sex and Health Education (RSHE) is a subject taught at both primary and secondary school.  

In 2020, Relationships and Sex Education was made compulsory for all secondary school pupils in England and Health Education compulsory for all pupils in state-funded schools.  

Last year, the Prime Minister and Education Secretary brought forward the first review of the curriculum following reports of pupils being taught inappropriate content in RSHE in some schools.  

The review was informed by the advice of an independent panel of experts. The results of the review and updated guidance for consultation has now been published.   

We are now asking for views from parents, schools and others before the guidance is finalised. You can find the consultation here .   

What is new in the updated curriculum?  

Following the panel’s advice, w e’re introducing age limits, to ensure children aren’t being taught about sensitive and complex subjects before they are ready to fully understand them.    

We are also making clear that the concept of gender identity – the sense a person may have of their own gender, whether male, female or a number of other categories   – is highly contested and should not be taught. This is in line with the cautious approach taken in our gu idance on gender questioning children.  

Along with other factors, teaching this theory in the classroom could prompt some children to start to question their gender when they may not have done so otherwise, and is a complex theory for children to understand.   

The facts about biological sex and gender reassignment will still be taught.  

The guidance for schools also contains a new section on transparency with parents, making it absolutely clear that parents have a legal right to know what their children are being taught in RSHE and can request to see teaching materials.   

In addition, we’re seeking views on adding several new subjects to the curriculum, and more detail on others. These include:   

  • Suicide prevention  
  • Sexual harassment and sexual violence  
  • L oneliness  
  • The prevalence of 'deepfakes’  
  • Healthy behaviours during pregnancy, as well as miscarriage  
  • Illegal online behaviours including drug and knife supply  
  • The dangers of vaping   
  • Menstrual and gynaecological health including endometriosis, polycystic ovary syndrome (PCOS) and heavy menstrual bleeding.  

What are the age limits?   

In primary school, we’ve set out that subjects such as the risks about online gaming, social media and scams should not be taught before year 3.   

Puberty shouldn’t be taught before year 4, whilst sex education shouldn’t be taught before year 5, in line with what pupils learn about conception and birth as part of the national curriculum for science.  

In secondary school, issues regarding sexual harassment shouldn’t be taught before year 7, direct references to suicide before year 8 and any explicit discussion of sexual activity before year 9.  

Do schools have to follow the guidance?  

Following the consultation, the guidance will be statutory, which means schools must follow it unless there are exceptional circumstances.   

There is some flexibility w ithin the age ratings, as schools will sometimes need to respond to questions from pupils about age-restricted content, if they come up earlier within their school community.   

In these circumstances, schools are instructed to make sure that teaching is limited to the essential facts without going into unnecessary details, and parents should be informed.  

When will schools start teaching this?  

School s will be able to use the guidance as soon as we publish the final version later this year.   

However, schools will need time to make changes to their curriculum, so we will allow an implementation period before the guidance comes into force.     

What can parents do with these resources once they have been shared?

This guidance has openness with parents at its heart. Parents are not able to veto curriculum content, but they should be able to see what their children are being taught, which gives them the opportunity to raise issues or concerns through the school’s own processes, if they want to.

Parents can also share copyrighted materials they have received from their school more widely under certain circumstances.

If they are not able to understand materials without assistance, parents can share the materials with translators to help them understand the content, on the basis that the material is not shared further.

Copyrighted material can also be shared under the law for so-called ‘fair dealing’ - for the purposes of quotation, criticism or review, which could include sharing for the purpose of making a complaint about the material.

This could consist of sharing with friends, families, faith leaders, lawyers, school organisations, governing bodies and trustees, local authorities, Ofsted and the media.  In each case, the sharing of the material must be proportionate and accompanied by an acknowledgment of the author and its ownership.

Under the same principle, parents can also share relevant extracts of materials with the general public, but except in cases where the material is very small, it is unlikely that it would be lawful to share the entirety of the material.

These principles would apply to any material which is being made available for teaching in schools, even if that material was provided subject to confidentiality restrictions.

Do all children have to learn RSHE?  

Parents still have the right to withdraw their child from sex education, but not from the essential content covered in relationships educatio n.  

You may also be interested in:

  • Education Secretary's letter to parents: You have the right to see RSHE lesson material
  • Sex education: What is RSHE and can parents access curriculum materials?
  • What do children and young people learn in relationship, sex and health education

Tags: age ratings , Gender , Relationships and Sex Education , RSHE , sex ed , Sex education

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I'm convinced NVIDIA's CEO was right about coding being dead in the water as a career option after watching OpenAI's GPT-4o coding demo

Despite being in its early release stages, GPT-4o is seemingly great at writing and detecting errors in code.

AI taking over coding jobs

What you need to know

  • OpenAI just launched its new flagship GPT-4o model at the just-concluded Spring Update event.
  • The model can reason across audio, vision, and text in real time, making interactions with ChatGPT more intuitive.
  • Based on the demo shown during the event, the model is seemingly great at coding and detecting errors. 

Besides privacy and security, job loss is a major concern for people with the prevalence of generative AI . With companies like Microsoft and OpenAI fully invested in the technology and making significant strides, it's unimaginable what AI will be able to do in just a few years. 

Last year, Microsoft released its third annual Work Trend Index report which pointed out that 49% of the polled participants feared losing their jobs to AI. However, the vast majority of participants disclosed that they wanted to leverage the technology's capabilities to make work easier and save time. 

This year's report focused on the State of AI at work , and interestingly, top company executives expressed their fears of there not being enough talent to fill open positions within their organizations. However, recruiters are prioritizing job applicants with an AI aptitude for vacant positions across cybersecurity, engineering, and creative design. Consequently, Microsoft reports there's been "a 142x increase in LinkedIn members adding AI skills like Copilot and ChatGPT to their profiles."

Upskilling in AI is a futureproof solution for job security

OpenAI just unveiled its new flagship GPT-4o model that can reason across audio, vision, and text in real-time, making interactions with ChatGPT more intuitive. And while it's still in the early release stages, the model is quite impressive going by the demos flooding the internet since its release. Definitely, faster and smarter than the "mildly embarrassing at best" GPT-4 model .

While watching OpenAI's Spring update event on Monday, one thing caught my attention — how insanely good GPT-4o is at coding. It's not only good but also fast and accurate based on short and precise prompts. Additionally, it's likely to get better in terms of performance via future updates coupled with new features. 

also for clarity: the new voice mode hasn't shipped yet (though the text mode of GPT-4o has). what you can currently use in the app is the old version.the new one is very much worth the wait! May 15, 2024

In the past few months, we've seen AI-powered tools like Image Creator from Designer (formerly Bing Image Creator) and Midjourney getting freakishly good at generating sophisticated structural designs, potentially putting architects and interior designers out of their jobs . This isn't to say the tools are blemish-free — Copilot and ChatGPT seemingly struggle to create a simple white image . 

NVIDIA CEO Jensen Huang has previously commented on AI taking jobs from humans. He further indicated pursuing a career in coding might not be worth the effort with the prevalence of AI . Instead, he recommended biology, education, manufacturing, or farming as plausible career options for the youth.

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  4. How to Write a Hypothesis

    what is error in writing hypothesis

  5. How to write a hypothesis [Steps and samples]

    what is error in writing hypothesis

  6. Types of error in hypothesis

    what is error in writing hypothesis

VIDEO

  1. Testing of Hypothesis,Null, alternative hypothesis, type-I & -II Error etc @VATAMBEDUSRAVANKUMAR

  2. Hypothesis Testing

  3. Writing a hypothesis and prediction 1 (Questioning & Scientific Method)

  4. Errors in Hypothesis Testing (Type I &Type II error) #hypotheses #hypothesestesting #statistics

  5. What is hysteresis error?

  6. Hypothesis and Statistical Error

COMMENTS

  1. 5.2

    5.2 - Writing Hypotheses. The first step in conducting a hypothesis test is to write the hypothesis statements that are going to be tested. For each test you will have a null hypothesis ( H 0) and an alternative hypothesis ( H a ). Null Hypothesis. The statement that there is not a difference in the population (s), denoted as H 0.

  2. How to Write a Strong Hypothesis

    6. Write a null hypothesis. If your research involves statistical hypothesis testing, you will also have to write a null hypothesis. The null hypothesis is the default position that there is no association between the variables. The null hypothesis is written as H 0, while the alternative hypothesis is H 1 or H a.

  3. Types I & Type II Errors in Hypothesis Testing

    Statisticians designed hypothesis tests to control Type I errors while Type II errors are much less defined. Consequently, many statisticians state that it is better to fail to detect an effect when it exists than it is to conclude an effect exists when it doesn't. ... The sentence as I write it is correct. Here's a simple way to understand ...

  4. Type I & Type II Errors

    Example: Null and alternative hypothesis. You test whether a new drug intervention can alleviate symptoms of an autoimmune disease. In this case: The null hypothesis (H 0) is that the new drug has no effect on symptoms of the disease. The alternative hypothesis (H 1) is that the drug is effective for alleviating symptoms of the disease.

  5. How to Write a Strong Hypothesis

    Step 5: Phrase your hypothesis in three ways. To identify the variables, you can write a simple prediction in if … then form. The first part of the sentence states the independent variable and the second part states the dependent variable. If a first-year student starts attending more lectures, then their exam scores will improve.

  6. What is a Research Hypothesis: How to Write it, Types, and Examples

    It seeks to explore and understand a particular aspect of the research subject. In contrast, a research hypothesis is a specific statement or prediction that suggests an expected relationship between variables. It is formulated based on existing knowledge or theories and guides the research design and data analysis. 7.

  7. The Craft of Writing a Strong Hypothesis

    Simple hypothesis. A simple hypothesis is a statement made to reflect the relation between exactly two variables. One independent and one dependent. Consider the example, "Smoking is a prominent cause of lung cancer." The dependent variable, lung cancer, is dependent on the independent variable, smoking. 4.

  8. 9.1: Introduction to Hypothesis Testing

    In hypothesis testing, the goal is to see if there is sufficient statistical evidence to reject a presumed null hypothesis in favor of a conjectured alternative hypothesis.The null hypothesis is usually denoted \(H_0\) while the alternative hypothesis is usually denoted \(H_1\). An hypothesis test is a statistical decision; the conclusion will either be to reject the null hypothesis in favor ...

  9. Hypothesis Testing

    Present the findings in your results and discussion section. Though the specific details might vary, the procedure you will use when testing a hypothesis will always follow some version of these steps. Table of contents. Step 1: State your null and alternate hypothesis. Step 2: Collect data. Step 3: Perform a statistical test.

  10. What is and How to Write a Good Hypothesis in Research?

    An effective hypothesis in research is clearly and concisely written, and any terms or definitions clarified and defined. Specific language must also be used to avoid any generalities or assumptions. Use the following points as a checklist to evaluate the effectiveness of your research hypothesis: Predicts the relationship and outcome.

  11. An Introduction to Statistics: Understanding Hypothesis Testing and

    HYPOTHESIS TESTING. A clinical trial begins with an assumption or belief, and then proceeds to either prove or disprove this assumption. In statistical terms, this belief or assumption is known as a hypothesis. Counterintuitively, what the researcher believes in (or is trying to prove) is called the "alternate" hypothesis, and the opposite ...

  12. Research Hypothesis In Psychology: Types, & Examples

    A research hypothesis, in its plural form "hypotheses," is a specific, testable prediction about the anticipated results of a study, established at its outset. It is a key component of the scientific method. Hypotheses connect theory to data and guide the research process towards expanding scientific understanding.

  13. Hypothesis Testing and Types of Errors

    Hypothesis Testing and Types of Errors. Illustrating a sample drawn from a population. Source: Six-Sigma-Material.com. Suppose we want to study income of a population. We study a sample from the population and draw conclusions. The sample should represent the population for our study to be a reliable one. Null hypothesis (H 0) ( H 0) is that ...

  14. Hypothesis: Definition, Examples, and Types

    A hypothesis is a tentative statement about the relationship between two or more variables. It is a specific, testable prediction about what you expect to happen in a study. It is a preliminary answer to your question that helps guide the research process. Consider a study designed to examine the relationship between sleep deprivation and test ...

  15. How to Write Hypothesis Test Conclusions (With Examples)

    When writing the conclusion of a hypothesis test, we typically include: Whether we reject or fail to reject the null hypothesis. The significance level. A short explanation in the context of the hypothesis test. For example, we would write: We reject the null hypothesis at the 5% significance level.

  16. Hypothesis Testing Explained (How I Wish It Was Explained to Me)

    In this article, I won't delve into how sample size is computed (I will probably do it in a follow-up). For now, let's simply use the Statmodel's function for testing the difference between sample means as a black box: ### input (hypothesis + confusion matrix) control_mean = 10 control_std = 8 treatment_mean = 10.5 treatment_std = 9 confidence = .975 power = .80 ### compute sample size ...

  17. What Is a Hypothesis and How Do I Write One?

    Merriam Webster defines a hypothesis as "an assumption or concession made for the sake of argument.". In other words, a hypothesis is an educated guess. Scientists make a reasonable assumption--or a hypothesis--then design an experiment to test whether it's true or not.

  18. What Is The Null Hypothesis & When To Reject It

    A null hypothesis is rejected if the measured data is significantly unlikely to have occurred and a null hypothesis is accepted if the observed outcome is consistent with the position held by the null hypothesis. Rejecting the null hypothesis sets the stage for further experimentation to see if a relationship between two variables exists.

  19. What is a Hypothesis

    Definition: Hypothesis is an educated guess or proposed explanation for a phenomenon, based on some initial observations or data. It is a tentative statement that can be tested and potentially proven or disproven through further investigation and experimentation. Hypothesis is often used in scientific research to guide the design of experiments ...

  20. Understanding Hypothesis Testing

    Hypothesis testing is a statistical method that is used to make a statistical decision using experimental data. Hypothesis testing is basically an assumption that we make about a population parameter. It evaluates two mutually exclusive statements about a population to determine which statement is best supported by the sample data.

  21. Null & Alternative Hypotheses

    Null hypothesis (H 0): Independent variable does not affect dependent variable. Alternative hypothesis (H a): Independent variable affects dependent variable. Test-specific template sentences. Once you know the statistical test you'll be using, you can write your hypotheses in a more precise and mathematical way specific to the test you chose ...

  22. 10 Common Statistical Errors to Avoid When Writing Your Manuscript

    Do: Don't: Plan your research and objectives before you carry out your experiments.: Use the same data set to formulate your hypothesis and test it.: Define your population.: Sample the wrong population or fail to specify your population.: Consider all possible sources of variation and control for them.: Neglect to select random and representative samples.: Select your statistical tests ...

  23. Implications of Standard Error in BI Hypothesis Testing

    Hypothesis testing is a method used to determine if there is enough evidence in a sample of data to infer that a certain condition is true for the entire population.

  24. 7 Common Errors in Writing + How to Fix Them (With Examples)

    Structure errors: These occur when the ideas in a piece of writing are unclear, not well-organized, or repetitive. Style errors: These happen when a writer doesn't follow language and style rules — e.g., using passive instead of active voice. 7 common errors in writing (and how to fix them) Now that you understand the categories of writing ...

  25. Small Sample Size BI Testing Challenges

    Hypothesis testing is a fundamental aspect of Business Intelligence (BI), enabling organizations to make data-driven decisions. However, when dealing with small sample sizes, BI professionals face ...

  26. New RSHE guidance: What it means for sex education lessons in schools

    R elationships, Sex and Health Education (RSHE) is a subject taught at both primary and secondary school.. In 2020, Relationships and Sex Education was made compulsory for all secondary school pupils in England and Health Education compulsory for all pupils in state-funded schools.

  27. What Is Standard Error?

    Using descriptive and inferential statistics, you can make two types of estimates about the population: point estimates and interval estimates.. A point estimate is a single value estimate of a parameter.For instance, a sample mean is a point estimate of a population mean. An interval estimate gives you a range of values where the parameter is expected to lie.

  28. OpenAI's new flagship GPT-4o model is great at detecting code errors

    Based on the demo shown during the event, the model is seemingly great at coding and detecting errors. Besides privacy and security, job loss is a major concern for people with the prevalence of ...