Bootstrapping the Operator Norm in High Dimensions: Error Estimation for Covariance Matrices and Sketching
Abstract
Although the operator (spectral) norm is one of the most widely used metrics for covariance estimation, comparatively little is known about the fluctuations of error in this norm. To be specific, let denote the sample covariance matrix of n observations in Rp that arise from a population matrix , and let Tn=n\|-\|op. In the setting where the eigenvalues of have a decay profile of the form λj() j-2β, we analyze how well the bootstrap can approximate the distribution of Tn. Our main result shows that up to factors of (n), the bootstrap can approximate the distribution of Tn at the dimension-free rate of n-β-1/26β+4, with respect to the Kolmogorov metric. Perhaps surprisingly, a result of this type appears to be new even in settings where p< n. More generally, we discuss the consequences of this result beyond covariance matrices and show how the bootstrap can be used to estimate the errors of sketching algorithms in randomized numerical linear algebra (RandNLA). An illustration of these ideas is also provided with a climate data example.
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.