Glossary
Statistical Power
Statistical power is the probability that a hypothesis test will correctly reject the null hypothesis when a true effect exists. Power equals 1 − β, where β is the Type II error rate (the probability of failing to detect a true effect). Adequate power (commonly 80% or higher) ...
Definition
Statistical power is the probability that a hypothesis test will correctly reject the null hypothesis when a true effect exists. Power equals 1 − β, where β is the Type II error rate (the probability of failing to detect a true effect). Adequate power (commonly 80% or higher) requires sufficient sample size, a meaningful effect size, and an appropriate significance level.
Why It Matters
Under-powered studies are ethically questionable because they expose participants to risk without a realistic chance of detecting the effect being studied. They also waste resources and contribute to the file-drawer problem — null results from under-powered studies are less likely to be published, distorting the evidence base. Power analysis should be conducted before data collection to ensure a study is designed to detect the expected effect.
Example
A researcher wants to test whether a new therapy reduces anxiety by a medium effect size (Cohen's d = 0.5). With α = 0.05 and a desired power of 0.80, a power analysis shows she needs 64 participants per group. Recruiting only 25 per group would yield power of approximately 0.30 — meaning there is a 70% chance of missing the effect even if it truly exists. She secures funding to recruit the full 128 participants.
Related Terms
Software Notes
- SPSS: Analyze > Power Analysis (requires the Power Analysis module). Alternatively, use G*Power (free external software) for t-tests, ANOVA, regression, and proportions.
- R:
pwr.t.test(d = 0.5, sig.level = 0.05, power = 0.80)from thepwrpackage. For ANOVA:pwr.anova.test(k = 3, f = 0.25, sig.level = 0.05, power = 0.80). For logistic regression:pwr::pwr.chisq.test(). - Stata:
power twomeans 0 0.5, sd(1) power(0.8)for two-group comparisons.power twoproportions 0.3 0.4, power(0.8)for proportions.power onemean 100 105, sd(15) power(0.8)for one-sample tests.