When is a z-test appropriate?

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Multiple Choice

When is a z-test appropriate?

Explanation:
A z-test is appropriate when you know the population standard deviation (or have a very large sample so the sampling distribution of the mean is essentially normal with a known standard error). The test statistic is z = (X̄ − μ0) / (σ/√n), and under the null this follows a standard normal distribution. This is why large samples or known variance make the z-test the right choice: you can standardize the gap between the sample mean and the hypothesized mean using the true spread of the population. If the population variance isn’t known and you have a small sample, you don’t rely on the z distribution because you’re uncertain about σ; the appropriate approach is the t-test, which uses a t distribution with n−1 degrees of freedom to account for that extra uncertainty. Using the z distribution for non-normal populations isn’t generally valid with small samples, and the idea that z tests are “only for proportions” isn’t correct—the z test can be used for means (and, with large samples, for proportions too).

A z-test is appropriate when you know the population standard deviation (or have a very large sample so the sampling distribution of the mean is essentially normal with a known standard error). The test statistic is z = (X̄ − μ0) / (σ/√n), and under the null this follows a standard normal distribution. This is why large samples or known variance make the z-test the right choice: you can standardize the gap between the sample mean and the hypothesized mean using the true spread of the population.

If the population variance isn’t known and you have a small sample, you don’t rely on the z distribution because you’re uncertain about σ; the appropriate approach is the t-test, which uses a t distribution with n−1 degrees of freedom to account for that extra uncertainty. Using the z distribution for non-normal populations isn’t generally valid with small samples, and the idea that z tests are “only for proportions” isn’t correct—the z test can be used for means (and, with large samples, for proportions too).

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