English

A Multiple Hypothesis Testing Approach to Low-Complexity Subspace Unmixing

Statistics Theory 2016-11-22 v2 Information Theory math.IT Statistics Theory

Abstract

Subspace-based signal processing traditionally focuses on problems involving a few subspaces. Recently, a number of problems in different application areas have emerged that involve a significantly larger number of subspaces relative to the ambient dimension. It becomes imperative in such settings to first identify a smaller set of active subspaces that contribute to the observation before further processing can be carried out. This problem of identification of a small set of active subspaces among a huge collection of subspaces from a single (noisy) observation in the ambient space is termed subspace unmixing. This paper formally poses the subspace unmixing problem under the parsimonious subspace-sum (PS3) model, discusses connections of the PS3 model to problems in wireless communications, hyperspectral imaging, high-dimensional statistics and compressed sensing, and proposes a low-complexity algorithm, termed marginal subspace detection (MSD), for subspace unmixing. The MSD algorithm turns the subspace unmixing problem for the PS3 model into a multiple hypothesis testing (MHT) problem and its analysis in the paper helps control the family-wise error rate of this MHT problem at any level α[0,1]\alpha \in [0,1] under two random signal generation models. Some other highlights of the analysis of the MSD algorithm include: (i) it is applicable to an arbitrary collection of subspaces on the Grassmann manifold; (ii) it relies on properties of the collection of subspaces that are computable in polynomial time; and (iiiiii) it allows for linear scaling of the number of active subspaces as a function of the ambient dimension. Finally, numerical results are presented in the paper to better understand the performance of the MSD algorithm.

Keywords

Cite

@article{arxiv.1408.1469,
  title  = {A Multiple Hypothesis Testing Approach to Low-Complexity Subspace Unmixing},
  author = {Waheed U. Bajwa and Dustin G. Mixon},
  journal= {arXiv preprint arXiv:1408.1469},
  year   = {2016}
}

Comments

Submitted for journal publication; 33 pages, 14 figures

R2 v1 2026-06-22T05:22:14.339Z