Literature DB >> 26168519

Statistical Evidence in Experimental Psychology: An Empirical Comparison Using 855 t Tests.

Ruud Wetzels1, Dora Matzke2, Michael D Lee3, Jeffrey N Rouder4, Geoffrey J Iverson3, Eric-Jan Wagenmakers2.   

Abstract

Statistical inference in psychology has traditionally relied heavily on p-value significance testing. This approach to drawing conclusions from data, however, has been widely criticized, and two types of remedies have been advocated. The first proposal is to supplement p values with complementary measures of evidence, such as effect sizes. The second is to replace inference with Bayesian measures of evidence, such as the Bayes factor. The authors provide a practical comparison of p values, effect sizes, and default Bayes factors as measures of statistical evidence, using 855 recently published t tests in psychology. The comparison yields two main results. First, although p values and default Bayes factors almost always agree about what hypothesis is better supported by the data, the measures often disagree about the strength of this support; for 70% of the data sets for which the p value falls between .01 and .05, the default Bayes factor indicates that the evidence is only anecdotal. Second, effect sizes can provide additional evidence to p values and default Bayes factors. The authors conclude that the Bayesian approach is comparatively prudent, preventing researchers from overestimating the evidence in favor of an effect.
© The Author(s) 2011.

Keywords:  t test; p value; Bayes factor; effect size; hypothesis testing

Year:  2011        PMID: 26168519     DOI: 10.1177/1745691611406923

Source DB:  PubMed          Journal:  Perspect Psychol Sci        ISSN: 1745-6916


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