Deviation Tests for a High-dimensional Mean

Abstract

This paper investigates testing for deviation of a high-dimensional mean vector μ. In contrast to the standard one-sample significance test of the form: H0e : μ = μ0 versus H1e : μ ≠ μ0, we focus on testing the deviation H0 : \|μ - μ0\|2 d0 versus H1 : \|μ - μ0\|2 < d0 for a prespecified length d0 > 0. Constructing a valid test statistic for this problem is technically nontrivial. By applying the concept of positive and negative feedback processes from control theory, we propose a test statistic based on a two-armed bandit (TAB) process. The deviation test is also extended to the two-sample setting. Simulation experiments confirm a good performance of the tests in finite samples. Finally, a real data analysis demonstrates the practical significance of the proposed deviation tests.

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