Question about two sample t-test (unpaired)

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In summary, the statistic computed for the unpaired two sample t-test is t = \frac{\bar{x} - \bar{y}}{\sqrt{SEM_x + SEM_y}}, where SEM_x and SEM_y are the standard errors of the sample means. While in the one sample t-test, the numerator is normalized with the population mean, in the two-sample t-test, the numerator represents the difference between the two sample means being tested against a zero difference.
  • #1
chever
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I have read that the statistic computed for the unpaired two sample t-test is:

[itex]t = \frac{\bar{x} - \bar{y}}{\sqrt{SEM_x + SEM_y}}[/itex]

where:

[itex]SEM_x = \frac{\sigma^2_x}{n_x}[/itex]

(and likewise for y).

Part of this makes sense: it is satisfactorily proven to me that that [itex]Var(\bar{x} - \bar{y}) = Var(\bar{x}) + Var(\bar{y})[/itex] when the two variables are independent. Then the denominator is the standard deviation of the term [itex]\bar{x} - \bar{y})[/itex]. What doesn't make sense is that the numerator isn't normalized. In the one sample t-test, one computes:

[itex]t = \frac{\bar{x} - \mu_x}{\sqrt{SEM_x}}[/itex]

so, here, [itex]\bar{x}[/itex] is normalized with [itex]\mu_x[/itex]. I don't see why this shouldn't also apply to the two-sample case. Can someone enlighten me?
 
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  • #2
In the two-sample t-test, you're testing whether the two samples are different from each other; that is, whether the mean of the difference between them is zero. You can think of the numerator as having an implicit 0 subtracted from it, if you like.
 
  • #3
pmsrw3 said:
In the two-sample t-test, you're testing whether the two samples are different from each other; that is, whether the mean of the difference between them is zero. You can think of the numerator as having an implicit 0 subtracted from it, if you like.

That clarifies matters a bit. Thank you.
 

1. What is a two sample t-test (unpaired)?

A two sample t-test (unpaired) is a statistical test used to compare the means of two independent groups. It is often used to determine if there is a significant difference between the means of two populations.

2. How is a two sample t-test (unpaired) different from a paired t-test?

A paired t-test is used when the two groups being compared are related or matched in some way, such as before and after measurements on the same individuals. In contrast, a two sample t-test (unpaired) is used when the two groups are independent and there is no relationship between them.

3. When should a two sample t-test (unpaired) be used?

A two sample t-test (unpaired) should be used when the data being compared is continuous and normally distributed, and the samples are independent of each other. Additionally, the variances of the two groups should be equal.

4. How is a two sample t-test (unpaired) performed?

To perform a two sample t-test (unpaired), the means and standard deviations of the two groups are calculated. Then, the t-statistic is calculated by taking the difference between the two means and dividing it by the standard error of the difference. The resulting t-value is then compared to a critical value from a t-distribution table to determine if there is a significant difference between the two groups.

5. What are the assumptions of a two sample t-test (unpaired)?

The assumptions of a two sample t-test (unpaired) include: the data is normally distributed, the samples are independent, the variances of the two groups are equal, and the data is measured on a continuous scale.

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