English

Safe Testing

Statistics Theory 2023-03-13 v5 Information Theory Machine Learning math.IT Methodology Statistics Theory

Abstract

We develop the theory of hypothesis testing based on the e-value, a notion of evidence that, unlike the p-value, allows for effortlessly combining results from several studies in the common scenario where the decision to perform a new study may depend on previous outcomes. Tests based on e-values are safe, i.e. they preserve Type-I error guarantees, under such optional continuation. We define growth-rate optimality (GRO) as an analogue of power in an optional continuation context, and we show how to construct GRO e-variables for general testing problems with composite null and alternative, emphasizing models with nuisance parameters. GRO e-values take the form of Bayes factors with special priors. We illustrate the theory using several classic examples including a one-sample safe t-test and the 2 x 2 contingency table. Sharing Fisherian, Neymanian and Jeffreys-Bayesian interpretations, e-values may provide a methodology acceptable to adherents of all three schools.

Keywords

Cite

@article{arxiv.1906.07801,
  title  = {Safe Testing},
  author = {Peter Grünwald and Rianne de Heide and Wouter Koolen},
  journal= {arXiv preprint arXiv:1906.07801},
  year   = {2023}
}

Comments

Accepted as discussion paper to the Journal of the Royal Statistical Society series B