Adaptive L-statistics for high dimensional test problem
Abstract
In this study, we focus on applying L-statistics to the high-dimensional one-sample location test problem. Intuitively, an L-statistic with parameters tends to perform optimally when the sparsity level of the alternative hypothesis matches . We begin by deriving the limiting distributions for both L-statistics with fixed parameters and those with diverging parameters. To ensure robustness across varying sparsity levels of alternative hypotheses, we first establish the asymptotic independence between L-statistics with fixed and diverging parameters. Building on this, we propose a Cauchy combination test that integrates L-statistics with different parameters. Both simulation results and real-data applications highlight the advantages of our proposed methods.
Cite
@article{arxiv.2410.14308,
title = {Adaptive L-statistics for high dimensional test problem},
author = {Huifang Ma and Long Feng and Zhaojun Wang},
journal= {arXiv preprint arXiv:2410.14308},
year = {2024}
}