Distribution-free detection of a submatrix

https://doi.org/10.1016/j.jmva.2017.01.013Get rights and content
Under an Elsevier user license
open archive

Abstract

We consider the problem of detecting the presence of a submatrix with larger-than-usual values in a large data matrix. This problem was considered in Butucea and Ingster (2013) under a one-parameter exponential family, and one of the procedures they analyzed is the scan test. Taking a nonparametric stance, we show that a calibration by permutation leads to the same (first-order) asymptotic performance. This is true for the two types of permutations we consider. We also study the corresponding rank-based variants and quantify precisely the loss in asymptotic power.

AMS subject classification

62G10

Keywords

Submatrix detection
Permutation test
Rank method
Exponential family
Asymptotic power
Gene expression data

Cited by (0)