Matrix Infinitely Divisible Series: Tail Inequalities and Their Applications
Chao Zhang, Xianjie Gao, Min-Hsiu Hsieh, Hanyuan Hang and, Dacheng Tao

TL;DR
This paper develops new tail inequalities for the largest eigenvalue of matrix infinitely divisible series, providing tighter bounds and applications in optimization and compressed sensing.
Contribution
It introduces novel tail inequalities for matrix i.d. series, including a new lower-bound function for improved bounds, extending existing Gaussian series results.
Findings
Derived Bennett-type and Bernstein-type tail inequalities.
Established tighter bounds for high-dimensional matrices.
Applied inequalities to optimization and compressed sensing problems.
Abstract
In this paper, we study tail inequalities of the largest eigenvalue of a matrix infinitely divisible (i.d.) series, which is a finite sum of fixed matrices weighted by i.d. random variables. We obtain several types of tail inequalities, including Bennett-type and Bernstein-type inequalities. This allows us to further bound the expectation of the spectral norm of a matrix i.d. series. Moreover, by developing a new lower-bound function for that appears in the Bennett-type inequality, we derive a tighter tail inequality of the largest eigenvalue of the matrix i.d. series than the Bernstein-type inequality when the matrix dimension is high. The resulting lower-bound function is of independent interest and can improve any Bennett-type concentration inequality that involves the function . The class of i.d. probability distributions is large and includes Gaussian…
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