Why P Values Are Not a Useful Measure of Evidence in Statistical Significance Testing

Author:

Hubbard Raymond1,Lindsay R. Murray2

Affiliation:

1. DRAKE UNIVERSITY,

2. UNIVERSITY OF LETHBRIDGE,

Abstract

Reporting p values from statistical significance tests is common in psychology's empirical literature. Sir Ronald Fisher saw the p value as playing a useful role in knowledge development by acting as an `objective' measure of inductive evidence against the null hypothesis. We review several reasons why the p value is an unobjective and inadequate measure of evidence when statistically testing hypotheses. A common theme throughout many of these reasons is that p values exaggerate the evidence against H0. This, in turn, calls into question the validity of much published work based on comparatively small, including .05, p values. Indeed, if researchers were fully informed about the limitations of the p value as a measure of evidence, this inferential index could not possibly enjoy its ongoing ubiquity. Replication with extension research focusing on sample statistics, effect sizes, and their confidence intervals is a better vehicle for reliable knowledge development than using p values. Fisher would also have agreed with the need for replication research.

Publisher

SAGE Publications

Subject

History and Philosophy of Science,General Psychology

Reference103 articles.

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2. Baird, D. (1988). Significance tests, history and logic. In S. Kotz & N.L. Johnson (Eds.), Encyclopedia of statistical sciences (pp. 466—471). New York: Wiley .

3. The test of significance in psychological research.

4. Bayarri, M.J. & Berger, J.O. (1999). Quantifying surprise in the data and model verification (with comments). In J.M. Bernardo , J.O. Berger , A.P. Dawid , & A.F.M. Smith (Eds.), Bayesian statistics (Vol. 6, pp. 53—82). Oxford: Clarendon.

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