The Spectral Norm of Random Lifts of Matrices
Afonso S. Bandeira, Yunzi Ding

TL;DR
This paper analyzes the spectral norm of random matrix lifts, extending spectral bounds by removing the $\
Contribution
It provides new bounds on the spectral norm of random lifts, improving existing inequalities and applications to eigenvalue bounds of lifted graphs.
Findings
Expected spectral norm bound: $oxed{ ext{max}_i ext{sqrt}( ext{sum}_j A_{ij}^2) + ext{max}_{ij} |A_{ij}| ext{sqrt}( ext{log}(kn))}$
Improved eigenvalue bounds for random $k$-lifts of graphs, approaching known spectral limits.
Extension of non-commutative Khintchine inequality by removing the $ ext{sqrt}( ext{log} n)$ factor.
Abstract
We study the spectral norm of random lifts of matrices. Given an symmetric matrix , and a centered distribution on symmetric matrices with spectral norm at most , let the matrix random lift be the random symmetric matrix , where are independent samples from . We prove that This result can be viewed as an extension of existing spectral bounds on random matrices with independent entries, providing further instances where the multiplicative factor in the Non-Commutative Khintchine inequality can be removed. As a direct application of our result, we prove an upper bound of on the new eigenvalues…
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