Power analysis for two-group independent sample t-test (2024)

NOTE: This page was developed using G*Power version 3.0.10. You can download the current version of G*Power fromhttp://www.psycho.uni-duesseldorf.de/abteilungen/aap/gpower3/ . You can also find help files, the manual and the user guide on this website.

Examples

Example 1. A clinical dietician wants to compare two different diets, A and B, for diabetic patients. She hypothesizes that diet A (Group 1) will be better than diet B (Group 2), in terms of lower blood glucose. She plans to get a random sample of diabetic patients and randomly assign them to one of the two diets. At the end of the experiment, which lasts 6 weeks, a fasting blood glucose test will be conducted on each patient. She also expects that the average difference in blood glucose measure between the two group will be about 10 mg/dl. Furthermore, she also assumes the standard deviation of blood glucose distribution for diet A to be 15 and the standard deviation for diet B to be 17. The dietician wants to know the number of subjects needed in each group assuming equal sized groups.

Example 2. An audiologist wanted to study the effect of gender on the response time to a certain sound frequency. He suspected that men were better at detecting this type of sound then were women. He took a random sample of 20 male and 20 female subjects for this experiment. Each subject was be given a button to press when he/she heard the sound. The audiologist then measured the response time – the time between the sound was emitted and the time the button was pressed. Now, he wants to know what the statistical power is based on his total of 40 subjects to detect the gender difference.

Prelude to the power analysis

There are two different aspects of power analysis. One is to calculate the necessary sample size for a specified power as in Example 1. The other aspect is to calculate the power when given a specific sample size as in Example 2. Technically, power is the probability of rejecting the null hypothesis when the specific alternative hypothesis is true.

For the power analyses below, we are going to focus on Example 1, calculating the sample size for a given statistical power of testing the difference in the effect of diet A and diet B. Notice the assumptions that the dietician has made in order to perform the power analysis. Here is the information we have to know or have to assume in order to perform the power analysis:

  • The expected difference in the average blood glucose; in this case it is set to 10.
  • The standard deviations of blood glucose for Group 1 and Group 2; in this case, they are set to 15 and 17 respectively.
  • The alpha level, or the Type I error rate, which is the probability of rejecting the null hypothesis when it is actually true. A common practice is to set it at the .05 level.
  • The pre-specified level of statistical power for calculating the sample size; this will be set to .8.
  • The pre-specified number of subjects for calculating the statistical power; this is the situation for Example 2.

Notice that in the first example, the dietician didn’t specify the mean for each group, instead she only specified the difference of the two means. This is because that she is only interested in the difference, and it does not matter what the means are as long as the difference is the same.

Power analysis

In G*Power, it is fairly straightforward to perform power analysis for comparing means. Approaching Example 1, first we set G*Power to a t-test involving the difference between two independent means.

Power analysis for two-group independent sample t-test (1)

As we are searching for sample size, an ‘A Priori’ power analysis is appropriate. As significance level and power are given, we are free to input those values, which are .05 and .8, respectively. Additionally, equal sized sample groups are assumed, meaning the allocation ratio of N1 to N2 is 1.

Power analysis for two-group independent sample t-test (2)

All that remains to be accounted for is the effect size. A click of the ‘Determine’ button calls up the appropriate window. The specific numbers entered for the means of groups 1 and 2 are irrelevant, so long as the difference between them is the correct value, in our case 10. Thus, 0 and 10, 5 and 15, -2 and 8, etc., would all be acceptable. For simplicity we will set the mean of group 1 to 0 and the mean of group 2 to 10. The respective standard deviations are known to us, as 15 and 17. Once entered, a press of ‘Calculate and transfer to main window’ inputs the effect size.

Power analysis for two-group independent sample t-test (3)

From there, a click of ‘Calculate’ in the main window produces the desired result, along with, in descending order, the Noncentrality parameter δ, the Critical t (the number of standard deviations from the null mean where an observation becomes statistically significant), the number of degrees freedom, and the test’s actual power. In addition, a graphical representation of the test is shown, with the sampling distribution a dotted blue line, the population distribution represented by a solid red line, a red shaded area delineating the probability of a type 1 error, a blue area the type 2 error, and a pair of green lines demarcating the critical points t.

Power analysis for two-group independent sample t-test (4)

The calculation results indicate that we need 42 subjects for diet A and another 42 subject for diet B in our sample in order to measure the effect. Now, let’s use another pair of means with the same difference. As we have discussed earlier, the results should be the same, and indeed they are.

Power analysis for two-group independent sample t-test (5)

Now the dietician may feel that a total sample size of 84 subjects is beyond her budget. One way of reducing the sample size is to increase the Type I error rate, or the alpha level. Let’s say instead of using alpha level of .05 we will use .07. Then our sample size will reduce by 4 for each group as shown below.

Power analysis for two-group independent sample t-test (6)

Now suppose the dietician can only collect data on 60 subjects with 30 in each group. What will the statistical power for her t-test be with respect to alpha level of .05?

To manage this, the type of power analysis is changed from the ‘A Priori’ investigation of sample size to the ‘Post Hoc’ power calculation. A couple new variables are to be inputted; the sample sizes are new and the significance level has been restored to .05.

Power analysis for two-group independent sample t-test (7)

The power is .661223.

What if she actually collected her data on 60 subjects but with 40 on diet A and 20 on diet B instead of equal sample sizes in the groups?

Power analysis for two-group independent sample t-test (8)

As you can see the power goes down from .661223 to .610252 even though the total number of subjects is the same; a balanced design is more efficient.

Discussion

An important technical assumption is the normality assumption. If the distribution is skewed, then a small sample size may not have the power shown in the results, because the value in the results is calculated using the method based on the normality assumption. We have seen that in order to compute the power or the sample size, we have to make a number of assumptions. These assumptions are used not only for the purpose of calculation, but are also used in the actual t-test itself. So one important side benefit of performing power analysis is to help us to better understand our designs and our hypotheses.

We have seen in the power calculation process that what matters in the two-independent sample t-test is the difference in the means and the standard deviations for the two groups. This leads to the concept of effect size. In this case, the effect size will be the difference in means over the pooled standard deviation. The larger the effect size, the larger the power for a given sample size. Or, the larger the effect size, the smaller sample size needed to achieve the same power. So, a good estimate of effect size is the key to a good power analysis. However, it is not always an easy task to determine the effect size. Good estimates of effect size come from the existing literature or from pilot studies.

For more information on power analysis, please visit ourIntroduction to Power Analysis seminar.

Power analysis for two-group independent sample t-test (2024)

FAQs

How can we maximize the power of the two sample t test for independent samples? ›

The power of a test can be increased in a number of ways, for example increasing the sample size, decreasing the standard error, increasing the difference between the sample statistic and the hypothesized parameter, or increasing the alpha level.

How to calculate t-test for two independent samples? ›

The test statistic for a two-sample independent t-test is calculated by taking the difference in the two sample means and dividing by either the pooled or unpooled estimated standard error. The estimated standard error is an aggregate measure of the amount of variation in both groups.

What is the minimum sample size for a 2 sample t-test? ›

There is no minimum sample size for the t test to be valid other than it be large enough to calculate the test statistic. Validity requires that the assumptions for the test statistic hold approximately.

How do you Analyse an independent sample t-test? ›

Independent-samples t-test
  1. Click on Analyze\Compare means\Independent Samples T test.
  2. Move the dependent continuous variable into the Test Variable box.
  3. Move the independent categorical variable into the Grouping Variable section.
  4. Click on Define groups and type in the numbers used in the data set to code each group.

What are the factors that affect the power of a test? ›

FACTORS AFFECTING POWER

The 4 primary factors that affect the power of a statistical test are a level, difference between group means, variability among subjects, and sample size.

What is the ideal sample size for an independent t-test? ›

In most studies, a sample size of at least 40 can guarantee that the sample mean is approximately normally distributed, and the one-sample t-test can then be safely applied. It is used to know whether the unknown means of two populations are different from each other based on independent samples from each population.

How to interpret p-value for 2 sample t-test? ›

If the p-value is large then the observed difference between the sample means is unsurprising and is interpreted as being consistent with hypothesis of equal population means. If on the other hand the p-value is small then we would be surprised about the observed difference if the null hypothesis really was true.

How to report results of independent sample t-test? ›

When reporting the result of an independent t-test, you need to include the t-statistic value, the degrees of freedom (df) and the significance value of the test (p-value). The format of the test result is: t(df) = t-statistic, p = significance value.

What are the conditions for a 2 sample t-test? ›

Two-sample t-test assumptions

Data in each group must be obtained via a random sample from the population. Data in each group are normally distributed. Data values are continuous. The variances for the two independent groups are equal.

What is the rule of thumb for t-test? ›

RULES OF THUMB. In “big” samples, if we get a t-test bigger than 2, we can usually reject the null at the 0.05 level. This is because in “big” samples, the t-distribution is very similar to the Normal distribution, so about 5% of the distribution is above 1.96 or below -1.96.

What are the limitations of the independent t-test? ›

9.5: When to NOT use the Independent Samples t-test
  • When There Are More Than Two Groups.
  • When the Groups are Dependent.
  • When the Distribution Doesn't Fit the t-test Assumptions. When the Two Standard Deviations are Very Different. When the Distribution is Not Normally Distributed.
May 12, 2022

What is a good t-test score? ›

Generally, a t-statistic of 2 or higher is considered to be statistically significant. However, the exact value of the t-statistic that is considered to be statistically significant will depend on the sample size and the level of confidence desired.

What is the t-test for two independent samples? ›

The Independent Samples t Test compares the means of two independent groups in order to determine whether there is statistical evidence that the associated population means are significantly different. The Independent Samples t Test is a parametric test. This test is also known as: Independent t Test.

How to tell if an independent sample t-test is significant? ›

If a p-value reported from a t test is less than 0.05, then that result is said to be statistically significant.

How to interpret t value in t-test? ›

Higher values of the t-score indicate that a large difference exists between the two sample sets. The smaller the t-value, the more similarity exists between the two sample sets.

Which of the following will give you more power in an independent sample t-test? ›

An increase in the difference between sample means will result in a larger value associated with the t-test statistic. This will lead to an increased probability that a significant result will be obtained (i.e. that the test will be associated with more power).

What would increase the power of a statistical test? ›

Increase sample size, Increase the significance level (alpha), Reduce measurement error by increasing the precision and accuracy of your measurement devices and procedures, Use a one-tailed test instead of a two-tailed test for t tests and z tests.

What are the three factors that determine the sample size requirements for an independent t-test? ›

To determine an appropriate sample size, we need to consider factors such as the desired level of confidence, margin of error, and variability in the responses.

How do you increase sample size with power? ›

This illustrates the general situation: Larger sample size gives larger power. The reason is essentially the same as in the example: Larger sample size gives a narrower sampling distribution, which means there is less overlap in the two sampling distributions (for null and alternate hypotheses).

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