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High dimensional asymptotics of likelihood ratio tests in Gaussian sequence model under convex constraint

7 October 2020
Q. Han
B. Sen
Yandi Shen
ArXiv (abs)PDFHTML
Abstract

In the Gaussian sequence model Y=μ+ξY=\mu+\xiY=μ+ξ, we study the likelihood ratio test (LRT) for testing H0:μ=μ0H_0: \mu=\mu_0H0​:μ=μ0​ versus H1:μ∈KH_1: \mu \in KH1​:μ∈K, where μ0∈K\mu_0 \in Kμ0​∈K, and KKK is a closed convex set in Rn\mathbb{R}^nRn. In particular, we show that under the null hypothesis, normal approximation holds for the log-likelihood ratio statistic for a general pair (μ0,K)(\mu_0,K)(μ0​,K), in the high dimensional regime where the estimation error of the associated least squares estimator diverges in an appropriate sense. The normal approximation further leads to a precise characterization of the power behavior of the LRT in the high dimensional regime. These characterizations show that the power behavior of the LRT is in general non-uniform with respect to the Euclidean metric, and illustrate the conservative nature of existing minimax optimality and sub-optimality results for the LRT. A variety of examples, including testing in the orthant/circular cone, isotonic regression, Lasso, and testing parametric assumptions versus shape-constrained alternatives, are worked out to demonstrate the versatility of the developed theory.

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