On p-Values and Bayes Factors

The p -value quantifies the discrepancy between the data and a null hypothesis of interest, usually the assumption of no difference or no effect. A Bayesian approach allows the calibration of p -values by transforming them to direct measures of the evidence against the null hypothesis, so-called Bay...

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Veröffentlicht in:Annual review of statistics and its application 2018-03, Vol.5 (1), p.393-419
Hauptverfasser: Held, Leonhard, Ott, Manuela
Format: Artikel
Sprache:eng
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Zusammenfassung:The p -value quantifies the discrepancy between the data and a null hypothesis of interest, usually the assumption of no difference or no effect. A Bayesian approach allows the calibration of p -values by transforming them to direct measures of the evidence against the null hypothesis, so-called Bayes factors. We review the available literature in this area and consider two-sided significance tests for a point null hypothesis in more detail. We distinguish simple from local alternative hypotheses and contrast traditional Bayes factors based on the data with Bayes factors based on p -values or test statistics. A well-known finding is that the minimum Bayes factor, the smallest possible Bayes factor within a certain class of alternative hypotheses, provides less evidence against the null hypothesis than the corresponding p -value might suggest. It is less known that the relationship between p -values and minimum Bayes factors also depends on the sample size and on the dimension of the parameter of interest. We illustrate the transformation of p -values to minimum Bayes factors with two examples from clinical research.
ISSN:2326-8298
2326-831X
DOI:10.1146/annurev-statistics-031017-100307