Publication:
P-value calibration in multiple hypotheses testing

Loading...
Thumbnail Image
Identifiers
Publication date
2017-08-15
Defense date
Advisors
Tutors
Journal Title
Journal ISSN
Volume Title
Publisher
Wiley
Impact
Google Scholar
Export
Research Projects
Organizational Units
Journal Issue
Abstract
As p-values are the most common measures of evidence against a hypothesis, their calibration with respect to null hypothesis conditional probability is important in order to match frequentist unconditional inference with the Bayesian ones. The Selke, Bayarri and Berger calibration is one of the most popular attempts to obtain such a calibration. This relies on the theoretical sampling null distribution of p-values, which is the well-known Uniform(0,1), but arising only for specific sampling models. We generalize this calibration by considering a sampling null distribution estimated from the data. It is possible to obtain such an empirical null distribution, for instance, in the context of multiple testing in which many p-values come from the null model. Such a context is purely instrumental for the purposes of p-value calibration, and multiple testing still needs to be considered with appropriate techniques. The new calibration proposed here still remains a simple analytic formula like the original one under the Uniform(0,1) and basically provides a stronger interpretation framework for the widely used p-value.
Description
Keywords
Bayes factor lower bound, Non-parametric bayes, Objective bayes, Significance testing
Bibliographic citation
Cabras, S. & Castellanos, M. E. (2017). P ‐value calibration in multiple hypotheses testing. Statistics in Medicine, 36(18), pp. 2875–2886.