Survivalist Pro
Photo by Dagmara Dombrovska Pexels Logo Photo: Dagmara Dombrovska

What does the t-test tell you?

The t test estimates the true difference between two group means using the ratio of the difference in group means over the pooled standard error of both groups. You can calculate it manually using a formula, or use statistical analysis software.

How many wives can you have if you're Amish?
How many wives can you have if you're Amish?

An Amish man may only have one wife. Should that wife pass away, he is free to remarry. The same goes for Amish women.

Read More »
What is the number one rule of camping?
What is the number one rule of camping?

Put your fire out: Because you can endanger those around you, this is one of the most important camping rules, regardless of where you go. Be sure...

Read More »

A t test is a statistical test that is used to compare the means of two groups. It is often used in hypothesis testing to determine whether a process or treatment actually has an effect on the population of interest, or whether two groups are different from one another. t test example You want to know whether the mean petal length of iris flowers differs according to their species. You find two different species of irises growing in a garden and measure 25 petals of each species. You can test the difference between these two groups using a t test and null and alterative hypotheses. The null hypothesis (H 0 ) is that the true difference between these group means is zero. ) is that the true difference between these group means is zero. The alternate hypothesis (H a ) is that the true difference is different from zero.

When to use a t test

A t test can only be used when comparing the means of two groups (a.k.a. pairwise comparison). If you want to compare more than two groups, or if you want to do multiple pairwise comparisons, use an ANOVA test or a post-hoc test. The t test is a parametric test of difference, meaning that it makes the same assumptions about your data as other parametric tests. The t test assumes your data: are independent are (approximately) normally distributed have a similar amount of variance within each group being compared (a.k.a. homogeneity of variance) If your data do not fit these assumptions, you can try a nonparametric alternative to the t test, such as the Wilcoxon Signed-Rank test for data with unequal variances.

What type of t test should I use?

When choosing a t test, you will need to consider two things: whether the groups being compared come from a single population or two different populations, and whether you want to test the difference in a specific direction.

One-sample, two-sample, or paired t test?

If the groups come from a single population (e.g., measuring before and after an experimental treatment), perform a paired t test . This is a within-subjects design. . This is a within-subjects design. If the groups come from two different populations (e.g., two different species, or people from two separate cities), perform a two-sample t test (a.k.a. independent t test ). This is a between-subjects design. (a.k.a. ). This is a between-subjects design. If there is one group being compared against a standard value (e.g., comparing the acidity of a liquid to a neutral pH of 7), perform a one-sample t test.

One-tailed or two-tailed t test?

What does 10 dots on a case knife mean?
What does 10 dots on a case knife mean?

The Case blade tang dating system allows you to identify your knife with a year or era in which the knife was manufactured. The dating symbols are...

Read More »
What girls should pack for a 3 day trip?
What girls should pack for a 3 day trip?

3. Simple Clothes Your cutest swimsuit. A few sundresses in a material that won't wrinkle. An adorable cover-up. A pair of shorts. A couple of...

Read More »

If you only care whether the two populations are different from one another, perform a two-tailed t test . . If you want to know whether one population mean is greater than or less than the other, perform a one-tailed t test. t test example In your test of whether petal length differs by species: Your observations come from two separate populations (separate species), so you perform a two-sample t test. You don’t care about the direction of the difference, only whether there is a difference, so you choose to use a two-tailed t test.

Prevent plagiarism, run a free check. Try for free

Performing a t test

The t test estimates the true difference between two group means using the ratio of the difference in group means over the pooled standard error of both groups. You can calculate it manually using a formula, or use statistical analysis software.

T test formula

The formula for the two-sample t test (a.k.a. the Student’s t-test) is shown below. In this formula, t is the t value, x 1 and x 2 are the means of the two groups being compared, s 2 is the pooled standard error of the two groups, and n 1 and n 2 are the number of observations in each of the groups. A larger t value shows that the difference between group means is greater than the pooled standard error, indicating a more significant difference between the groups. You can compare your calculated t value against the values in a critical value chart (e.g., Student’s t table) to determine whether your t value is greater than what would be expected by chance. If so, you can reject the null hypothesis and conclude that the two groups are in fact different.

T test function in statistical software

Most statistical software (R, SPSS, etc.) includes a t test function. This built-in function will take your raw data and calculate the t value. It will then compare it to the critical value, and calculate a p-value. This way you can quickly see whether your groups are statistically different. In your comparison of flower petal lengths, you decide to perform your t test using R. The code looks like this:

t.test(Petal.Length ~ Species, data = flower.data)

Download the data set to practice by yourself.

Sample data set

Interpreting test results

If you perform the t test for your flower hypothesis in R, you will receive the following output:

The output provides:

An explanation of what is being compared, called data in the output table. The t value: -33.719. Note that it’s negative; this is fine! In most cases, we only care about the absolute value of the difference, or the distance from 0. It doesn’t matter which direction. The degrees of freedom: 30.196. Degrees of freedom is related to your sample size, and shows how many ‘free’ data points are available in your test for making comparisons. The greater the degrees of freedom, the better your statistical test will work. The p value: 2.2e-16 (i.e. 2.2 with 15 zeros in front). This describes the probability that you would see a t value as large as this one by chance. A statement of the alternative hypothesis (H a ). In this test, the H a is that the difference is not 0. The 95% confidence interval. This is the range of numbers within which the true difference in means will be 95% of the time. This can be changed from 95% if you want a larger or smaller interval, but 95% is very commonly used. The mean petal length for each group. t test example From the output table, we can see that the difference in means for our sample data is −4.084 (1.456 − 5.540), and the confidence interval shows that the true difference in means is between − 3.836 and − 4.331. So, 95% of the time, the true difference in means will be different from 0. Our p value of 2.2e – 16 is much smaller than 0.05, so we can reject the null hypothesis of no difference and say with a high degree of confidence that the true difference in means is not equal to zero.

Are humans meant to be stationary?
Are humans meant to be stationary?

Yes, human bodily selves are born to move, but they are not born to move in one particular way, pattern, or environment. Humans are a capacity to...

Read More »
Why shouldn't you put hot water in a kettle?
Why shouldn't you put hot water in a kettle?

Boiling water takes forever, so you decide to speed things up by filling the pot with scalding hot tap water instead of cold. DON'T DO IT! Why?...

Read More »

Presenting the results of a t test

When reporting your t test results, the most important values to include are the t value, the p value, and the degrees of freedom for the test. These will communicate to your audience whether the difference between the two groups is statistically significant (a.k.a. that it is unlikely to have happened by chance). You can also include the summary statistics for the groups being compared, namely the mean and standard deviation. In R, the code for calculating the mean and the standard deviation from the data looks like this:

flower.data %>%

group_by(Species) %>%

summarize(mean_length = mean(Petal.Length),

sd_length = sd(Petal.Length))

In our example, you would report the results like this:

The difference in petal length between iris species 1 (M = 1.46; SD = 0.206) and iris species 2 (M = 5.54; SD = 0.569) was significant (t (30) = − 33.7190; p < 2.2e-16).

Frequently asked questions about t tests

What is the best item for survival?
What is the best item for survival?

TOP TEN ESSENTIAL WILDERNESS SURVIVAL ITEMS FIRST-AID SUPPLIES – First Aid Kit. ... FIRE – Matches, lighter and fire starters. ... REPAIR KIT AND...

Read More »
Is it good to drink water at night?
Is it good to drink water at night?

Drinking warm water before bed will keep you hydrated through the night and may help the body to rid itself of unwanted toxins. It may also help to...

Read More »
Can you just build a house in the woods UK?
Can you just build a house in the woods UK?

Can I build anything? Yes, certain things, but only for forestry purposes. There is a notification process, requiring you to tell the local...

Read More »
What is the strongest weapon to ever exist?
What is the strongest weapon to ever exist?

The Tsar Bomba Without a doubt, the Tsar Bomba is the world's most powerful weapon, and one that is thankfully no longer in use. Designed and...

Read More »