Abstract
BackgroundThe p value obtained from a significance test provides no information about the magnitude or importance of the underlying phenomenon. Therefore, additional reporting of effect size is often recommended. Effect sizes are theoretically independent from sample size. Yet this may not hold true empirically: non-independence could indicate publication bias.MethodsWe investigate whether effect size is independent from sample size in psychological research. We randomly sampled 1,000 psychological articles from all areas of psychological research. We extracted p values, effect sizes, and sample sizes of all empirical papers, and calculated the correlation between effect size and sample size, and investigated the distribution of p values.ResultsWe found a negative correlation of r = −.45 [95% CI: −.53; −.35] between effect size and sample size. In addition, we found an inordinately high number of p values just passing the boundary of significance. Additional data showed that neither implicit nor explicit power analysis could account for this pattern of findings.ConclusionThe negative correlation between effect size and samples size, and the biased distribution of p values indicate pervasive publication bias in the entire field of psychology.
Highlights
The use the p value is often criticized [1,2], since p values lead to dichotomous reject/not reject decisions, and to the misconception that significance means a large effect while nonsignificance means no effect [3,4]
Correlation between Effect Size and Sample Size The distribution of corrected effect size (ES) and of sample size (SS) is given in Figures 2 and 3
The overall correlation between ES and SS was r = 2.54 [95% CI: 2.60; 2.50]
Summary
We investigate whether effect size is independent from sample size in psychological research. We randomly sampled 1,000 psychological articles from all areas of psychological research. Effect sizes, and sample sizes of all empirical papers, and calculated the correlation between effect size and sample size, and investigated the distribution of p values
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