Testing many constraints in possibly irregular models using incomplete U-statistics

Author:

Sturma Nils1ORCID,Drton Mathias1ORCID,Leung Dennis2

Affiliation:

1. Munich Center for Machine Learning and Department of Mathematics, School of Computation, Information and Technology, Technical University of Munich , Munich , Germany

2. School of Mathematics and Statistics, University of Melbourne , Melbourne , Australia

Abstract

Abstract We consider the problem of testing a null hypothesis defined by equality and inequality constraints on a statistical parameter. Testing such hypotheses can be challenging because the number of relevant constraints may be on the same order or even larger than the number of observed samples. Moreover, standard distributional approximations may be invalid due to irregularities in the null hypothesis. We propose a general testing methodology that aims to circumvent these difficulties. The constraints are estimated by incomplete U-statistics, and we derive critical values by Gaussian multiplier bootstrap. We show that the bootstrap approximation of incomplete U-statistics is valid for kernels that we call mixed degenerate when the number of combinations used to compute the incomplete U-statistic is of the same order as the sample size. It follows that our test controls type I error even in irregular settings. Furthermore, the bootstrap approximation covers high-dimensional settings making our testing strategy applicable for problems with many constraints. The methodology is applicable, in particular, when the constraints to be tested are polynomials in U-estimable parameters. As an application, we consider goodness-of-fit tests of latent-tree models for multivariate data.

Funder

European Research Council

Publisher

Oxford University Press (OUP)

Reference59 articles.

1. A two-step method for testing many moment inequalities;Bai;Journal of Business & Economic Statistics,2021

2. A tetrad test for causal indicators;Bollen;Psychological Methods,2000

3. The evolution of gene expression levels in mammalian organs;Brawand;Nature,2011

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