English

Improved $q$-values for discrete uniform and homogeneous tests: a comparative study

Methodology 2021-12-08 v2 Computation

Abstract

Large scale discrete uniform and homogeneous PP-values often arise in applications with multiple testing. For example, this occurs in genome wide association studies whenever a nonparametric one-sample (or two-sample) test is applied throughout the gene loci. In this paper we consider qq-values for such scenarios based on several existing estimators for the proportion of true null hypothesis, π0\pi_0, which take the discreteness of the PP-values into account. The theoretical guarantees of the several approaches with respect to the estimation of π0\pi_0 and the false discovery rate control are reviewed. The performance of the discrete qq-values is investigated through intensive Monte Carlo simulations, including location, scale and omnibus nonparametric tests, and possibly dependent PP-values. The methods are applied to genetic and financial data for illustration purposes too. Since the particular estimator of π0\pi_0 used to compute the qq-values may influence the power, relative advantages and disadvantages of the reviewed procedures are discussed. Practical recommendations are given.

Keywords

Cite

@article{arxiv.2006.01882,
  title  = {Improved $q$-values for discrete uniform and homogeneous tests: a comparative study},
  author = {Marta Cousido-Rocha and Jacobo de Uña-Álvarez and Sebastian Döhler},
  journal= {arXiv preprint arXiv:2006.01882},
  year   = {2021}
}
R2 v1 2026-06-23T16:00:25.506Z