How to Do a T Test in Excel (2 Ways with Interpretation of Results)

In the dataset, you will see the prices of different laptops and smartphones. Here is a formula that performs a T-Test on the prices of these products and returns the t-test result.

=T.TEST(B5:B14,C5:C14,2,2)

<a href=Calculating Two Sample T-Test Result by Formula" width="455" height="427" />

We set the 3rd argument of the function to 2 as we are doing a two-tailed t-test on the dataset. The 4th argument should be 2 for a two-sample equal variance t-test.

Case 1.2 – Paired T-Test

We are going to apply another formula to calculate the Paired T-Test. The following dataset shows the performance mark of some employees in two different criteria.

=T.TEST(C5:C13,D5:D13,2,1)

Calculating Paired T-Test Result by Formula

Note: The explanation of the results is described in the following sections.

Method 2 – Using the Analysis ToolPak

Initiating Analysis Toolpak Add-in

Adding Analysis Toolpak Add-in

Case 2.1 – Tw-Sample Equal Variance T-Test

Opening Two Sample T Test by Analysis Toolpak

Setting up Parameters for Two Sample T-Test

Showing T-Test Result for Two Sample Test

Comments on Results

The output shows that the mean values for Laptops and Smartphones are 1608.85 and 1409.164 respectively. We can see from the Variances row that they are not precisely equal, but they are close enough to be assumed to have equal variances. The most relevant metric is the p-value.

The difference between means is statistically significant if the p-value is less than your significance level. Excel calculates p-values for one- and two-tailed T Tests.

One-tailed T Tests can detect only one direction of difference between means. A one-tailed test, for example, might only evaluate whether Smartphones have higher prices than Laptops. Two-tailed tests can reveal differences that are larger or smaller than. There are some other disadvantages to utilizing one-tailed testing, so I’ll continue with the conventional two-tailed results.

For our results, we’ll utilize P(T=t) two-tail, which is the p-value for the t-test’s two-tailed version. We cannot reject the null hypothesis because our p-value (0.095639932) is greater than the conventional significance level of 0.05. The hypothesis that the population means differ is supported by our sample data. The mean price of Laptops is greater than the mean price of Smartphones’.

The Analysis ToolPak also returns results for a one-tailed t-test. Here, the one-tailed P value of the two-sample equal variance t-test is 1.734.

Case 2.2 – Paired T-Test

Select the t-Test: Paired Two Samples for Mean when you open the Data Analysis window.

Showing T-Test Result for Paired Test

Comments on Results

The result shows that the mean for the Workpace is 104 and the mean for the Efficiency is 96.56.

The difference between means is statistically significant if the p-value is less than your significance level. For our results, we’ll utilize P(T=t) two-tail, which is the p-value for the t-test’s two-tailed version. We cannot reject the null hypothesis because our p-value (0.188) is greater than the conventional significance level of 0.05. The hypothesis that the population means differ is supported by our sample data. In particular, the Workpace mean exceeds the Efficiency mean.

How to Interpret T-Test Results in Excel

Let’s bring out the results again.

Two Sample Equal Variance t-Test Interpretation

i. Mean:

  1. The mean of laptop prices = 1608.85
  2. The mean of smartphone prices = 1409.164

ii. Variance

  1. The variance of laptop prices = 77622.597
  2. The variance of smartphone prices = 51313.7904

iii. Observations

The number of observations for both laptops and smartphones are 10.

iv. Pooled Variance

The samples’ average variance, calculated by pooling the variances of each sample.

The mathematical formula for this parameter is:

((No of observations of Sample 1-1)*(Variance of Sample 1) + (No of observations of Sample 2-1)*(Variance of Sample 2))/(No of observations of Sample 1 + No of observations of Sample 2 – 2)

So it becomes: ((10-1)*77622.59676+(10-1)*51313.7904)/(10+10-2) = 64468.19358

v. Hypothesized Mean Difference

We “hypothesize” that the number is the difference between the two population means. In this situation, we chose 0 because we want to see if the difference between the means of the two populations is zero.

vi. df

It indicates the value of the Degrees of Freedom. Formula for this parameter is:

No of observations of Sample 1 + No of observations of Sample 2 – 2 = 10 + 10 – 2 = 18

vii. t-Stat

The test statistic value of the t-Test operation.

The formula for this parameter is given below.

(Mean of Sample 1 – Mean of Sample 2)/(Square root of (Pooling Variance* (1/No of observations of Sample 1 + 1/No of observations of Sample 2)))

So it becomes: (1608.85 – 1409.164)/Sqrt(64468.19358 * (1/10 + 1/10)) = 1.758570846

A two-tailed t-test’s p-value. This value can be found by entering t = 1.758570846 with 18 degrees of freedom into any T Score to P Value Calculator.

In this situation, the value of p is 0.095639932. Because this is greater than 0.05, we cannot reject the null hypothesis. This suggests that we lack adequate evidence to conclude that the two population means differ.

ix. t-Critical two-tail

This is the test’s crucial value. A t-Critical value Calculator with 18 degrees of freedom and a 95% confidence level can be used to calculate this number.

In this instance, the critical value is 2.10092204. We cannot reject the null hypothesis because our test statistic t is less than this number. Again, we lack adequate information to conclude that the two population means are distinct.

Things to Remember

Frequently Asked Questions

Can I perform a t-test on unequal sample sizes in Excel?

Yes, you can use the T.TEST function to do a t-test on unequal sample sizes. When calculating the test statistic, Excel automatically accounts for unequal sample sizes.

What is the difference between a one-tailed and a two-tailed t-test?

A one-tailed t-test determines if the means of the two groups differ substantially in a given direction (e.g., greater or smaller). A two-tailed t-test looks for any significant difference, regardless of direction.

Can I calculate the effect size in Excel for t-tests?

While there is no built-in tool in Excel to calculate effect size, you can manually compute Cohen’s d for independent t-tests and paired sample correlations for paired t-tests using Excel’s basic mathematical operations.