The power of a hypothesis test is the probability of notcommitting a Type II error – failing to reject the null hypothesiswhen the null hypothesis is false.

The effect size is the difference between the true value and thevalue specified in the null hypothesis.

Effect size = True value - Hypothesized value

For example, suppose the null hypothesis states that a populationmean is equal to 100. A researcher might ask: What is the probabilityof rejecting the null hypothesis if the true population mean is equalto 90? In this example, the effect size would be 90 - 100, whichequals -10. Obviously if the true value is far from the hypothesisedvalue then the null hypothesis is more likely to be rejected so theprobability of committing a Type II error is reduced. With this madeclear we can make the following summary.

Factors That Affect Power

The power of a hypothesis test is affected by three factors.

In addition, the probability of committing a Type II errorincreases with decreasing probability of committing a Type I test. Itis impossible to simultaneously decrease the probability of a Type Itest and Type II test.