Quickest Detection for Changes in Maximal kNN Coherence of Random Matrices
Abstract
This paper addresses the problem of quickest detection of a change in the maximal coherence between columns of a n× p random matrix based on a sequence of matrix observations having a single unknown change point. The random matrix is assumed to have identically distributed rows and the maximal coherence is defined as the largest of the p 2 correlation coefficients associated with any row. Likewise, the k nearest neighbor (kNN) coherence is defined as the k-th largest of these correlation coefficients. The forms of the pre- and post-change distributions of the observed matrices are assumed to belong to the family of elliptically contoured densities with sparse dispersion matrices but are otherwise unknown. A non-parametric stopping rule is proposed that is based on the maximal k-nearest neighbor sample coherence between columns of each observed random matrix. This is a summary statistic that is related to a test of the existence of a hub vertex in a sample correlation graph having a degree at least k. Performance bounds on the delay and false alarm performance of the proposed stopping rule are obtained in the purely high dimensional regime where p→ ∞ and n is fixed. When the pre-change dispersion matrix is diagonal it is shown that, among all functions of the proposed summary statistic, the proposed stopping rule is asymptotically optimal under a minimax quickest change detection (QCD) model as the stopping threshold approaches infinity. The theory developed also applies to sequential hypothesis testing and fixed sample size tests.
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