English

Multiple testing of composite null hypotheses for discrete data using randomized $p$-values

Methodology 2023-03-13 v2

Abstract

PP-values that are derived from continuously distributed test statistics are typically uniformly distributed on (0,1)(0,1) under least favorable parameter configurations (LFCs) in the null hypothesis. Conservativeness of a pp-value PP (meaning that PP is under the null hypothesis stochastically larger than a random variable which is uniformly distributed on (0,1)(0,1)) can occur if the test statistic from which PP is derived is discrete, or if the true parameter value under the null is not an LFC. To deal with both of these sources of conservativeness, we present two approaches utilizing randomized pp-values, namely single-stage and two-stage randomization. We illustrate their effectiveness for testing a composite null hypothesis under a binomial model. We also give an example of how the proposed pp-values can be used to test a composite null in group testing designs. Similar to previous findings, we find that the proposed randomized pp-values are less conservative compared to non-randomized pp-values under the null hypothesis, but that they are stochastically not smaller under the alternative. The problem of establishing the validity of randomized pp-values is not trivial and has received attention in previous literature. We show that our proposed randomized pp-values are valid under various discrete statistical models which are such that the distribution of the corresponding test statistic belongs to an exponential family. The behaviour of the power function for the tests based on the proposed randomized pp-values as a function of the sample size is also investigated. Simulations and a real data analysis are used to compare the different considered pp-values.

Keywords

Cite

@article{arxiv.2208.06342,
  title  = {Multiple testing of composite null hypotheses for discrete data using randomized $p$-values},
  author = {Daniel Ochieng and Anh-Tuan Hoang and Thorsten Dickhaus},
  journal= {arXiv preprint arXiv:2208.06342},
  year   = {2023}
}
R2 v1 2026-06-25T01:40:11.417Z