An ∞ Eigenvector Perturbation Bound and Its Application to Robust Covariance Estimation
Abstract
In statistics and machine learning, people are often interested in the eigenvectors (or singular vectors) of certain matrices (e.g. covariance matrices, data matrices, etc). However, those matrices are usually perturbed by noises or statistical errors, either from random sampling or structural patterns. One usually employs Davis-Kahan θ theorem to bound the difference between the eigenvectors of a matrix A and those of a perturbed matrix A = A + E, in terms of 2 norm. In this paper, we prove that when A is a low-rank and incoherent matrix, the ∞ norm perturbation bound of singular vectors (or eigenvectors in the symmetric case) is smaller by a factor of d1 or d2 for left and right vectors, where d1 and d2 are the matrix dimensions. The power of this new perturbation result is shown in robust covariance estimation, particularly when random variables have heavy tails. There, we propose new robust covariance estimators and establish their asymptotic properties using the newly developed perturbation bound. Our theoretical results are verified through extensive numerical experiments.
Turn this paper into a lesson
ArcXiv compiles a structured reading guide from this paper's metadata: plain-English importance, contributions, prerequisite concepts, which sections to read first, flashcards, and a quiz. Grounded in the abstract, never invented.