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Lære Comparing Two Groups: t-Tests and Assumptions | Statistical Inference and Hypothesis Testing
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bookComparing Two Groups: t-Tests and Assumptions

When you need to compare the means of two groups, you must first determine whether your samples are independent or paired. Independent samples occur when the two groups have no relationship to each other, such as comparing test scores from students in different classrooms. Paired samples arise when the same subjects are measured twice, or when there is a natural pairing, like before-and-after measurements on the same individuals.

Before using a t-test to compare means, check its key assumptions:

  • The data in each group are drawn from populations that are approximately normally distributed;
  • The samples are independent of each other (for independent t-tests);
  • The variances of the two groups are equal (homogeneity of variance), though some versions of the t-test can adjust for unequal variances.

Violating these assumptions can affect the validity of your results, so always examine your data before proceeding.

12345678
# Simulate two independent samples set.seed(123) group1 <- rnorm(30, mean = 5, sd = 1) group2 <- rnorm(30, mean = 6, sd = 1) # Perform an independent two-sample t-test result <- t.test(group1, group2, var.equal = TRUE) print(result)
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The output of t.test() provides several important statistics for interpreting the results. The test statistic (t = -3.7866) measures how far apart the group means are, relative to the variation in your data. The p-value (p-value = 0.0003674) tells you the probability of observing such a difference, or more extreme, if the true means were equal. A small p-value (typically less than 0.05) suggests strong evidence against the null hypothesis of equal means.

The confidence interval (-1.40 to -0.43) estimates the range in which the true difference in means is likely to fall, with 95% confidence. Since this interval does not include zero, it supports the conclusion that the group means are significantly different. The sample estimates show the observed means for each group (5.08 for group1 and 5.97 for group2), making the direction and size of the difference clear.

By carefully considering the assumptions and interpreting these statistics, you can rigorously compare two groups and draw valid conclusions about their differences.

question mark

What is the primary purpose of a t-test when comparing two groups?

Select the correct answer

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bookComparing Two Groups: t-Tests and Assumptions

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When you need to compare the means of two groups, you must first determine whether your samples are independent or paired. Independent samples occur when the two groups have no relationship to each other, such as comparing test scores from students in different classrooms. Paired samples arise when the same subjects are measured twice, or when there is a natural pairing, like before-and-after measurements on the same individuals.

Before using a t-test to compare means, check its key assumptions:

  • The data in each group are drawn from populations that are approximately normally distributed;
  • The samples are independent of each other (for independent t-tests);
  • The variances of the two groups are equal (homogeneity of variance), though some versions of the t-test can adjust for unequal variances.

Violating these assumptions can affect the validity of your results, so always examine your data before proceeding.

12345678
# Simulate two independent samples set.seed(123) group1 <- rnorm(30, mean = 5, sd = 1) group2 <- rnorm(30, mean = 6, sd = 1) # Perform an independent two-sample t-test result <- t.test(group1, group2, var.equal = TRUE) print(result)
copy

The output of t.test() provides several important statistics for interpreting the results. The test statistic (t = -3.7866) measures how far apart the group means are, relative to the variation in your data. The p-value (p-value = 0.0003674) tells you the probability of observing such a difference, or more extreme, if the true means were equal. A small p-value (typically less than 0.05) suggests strong evidence against the null hypothesis of equal means.

The confidence interval (-1.40 to -0.43) estimates the range in which the true difference in means is likely to fall, with 95% confidence. Since this interval does not include zero, it supports the conclusion that the group means are significantly different. The sample estimates show the observed means for each group (5.08 for group1 and 5.97 for group2), making the direction and size of the difference clear.

By carefully considering the assumptions and interpreting these statistics, you can rigorously compare two groups and draw valid conclusions about their differences.

question mark

What is the primary purpose of a t-test when comparing two groups?

Select the correct answer

Var alt klart?

Hvordan kan vi forbedre det?

Tak for dine kommentarer!

Sektion 2. Kapitel 3
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