Hypothesis basics
Errors and significance
Decision rules
Tests of the mean
Proportions and variance
100

This hypothesis represents the status quo and usually states that there is no effect or no difference in the population.

null hypothesis

100

This error occurs when a true null hypothesis is rejected.

Type I error

100

counterfactual argumentThis value is compared directly to the significance level to decide whether to reject the null hypothesis.

p-value

100

This test is used when the population variance is known and the population is normally distributed.

tests of the mean of a normal distribution

100

This test is used to evaluate claims about a population proportion when sample sizes are large.

population proportion

200

This hypothesis represents the claim or effect that the researcher wants to find evidence for.

alternative hypothesis

200

This error occurs when a false null hypothesis is not rejected

Type II error

200

This value defines the boundary between the rejection and non-rejection regions of a test statistic.

critical value

200

This test uses the standard normal distribution to evaluate a population mean.

Z-test

200

This test uses a normal approximation to test proportions when certain conditions are met

Z-test for proportions

300

This type of hypothesis specifies an exact value for a population parameter.

simple hypothesis

300

This value represents the probability of committing a Type I error.

significance level

300

This argument assumes the null hypothesis is true in order to evaluate how likely the observed data is.


counterfactual argument

300

This test is used when the population variance is unknown and the sample size is small.

the mean of a normal distribution

300

This test is used to evaluate whether the population variance equals a specified value.

variance of a normal population


400

This alternative hypothesis tests for a difference in one specific direction only.

one-sided composite alternative hypothesis

400

This term refers to the probability of committing a Type II error.

probability of a Type II error

400

This graph or mathematical relationship shows how the power of a test changes for different true parameter values.

power function

400

This distribution is used instead of the normal distribution when the population variance is unknown.

t-distribution

400

This distribution is used in hypothesis tests involving population variance.


chi-square distribution

500

This alternative hypothesis tests for a difference in either direction from the hypothesized value.

two-sided composite alternative hypothesis

500

This concept describes the probability of correctly rejecting a false null hypothesis.

power

500

This approach rejects the null hypothesis when the test statistic falls in the rejection region defined by α.

critical value approach

500

This value determines the shape of the t-distribution used in hypothesis testing.

degrees of freedom

500

This test is commonly used in quality control to check variability in manufacturing processes.

chi-square test for variance

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