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Journals tend to publish only statistically significant evidence, creating a scientific record that markedly overstates the size of effects. We provide a new tool that corrects for this bias without requiring access to nonsignificant results. It capitalizes on the fact that the distribution of significant p values, p-curve, is a function of the true underlying effect. Researchers armed only with sample sizes and test results of the published findings can correct for publication bias. We validate the technique with simulations and by reanalyzing data from the Many-Labs Replication project. We demonstrate that p-curve can arrive at conclusions opposite that of existing tools by reanalyzing the meta-analysis of the "choice overload" literature.
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Uri Simonsohn
United Nations
Leif D. Nelson
University of California, Berkeley
Joseph P. Simmons
California University of Pennsylvania
Perspectives on Psychological Science
University of California, Berkeley
California University of Pennsylvania
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Simonsohn et al. (Sat,) studied this question.
synapsesocial.com/papers/69f3e9007ef2908b825e44f4 — DOI: https://doi.org/10.1177/1745691614553988