Phase Transition of Spectral Fluctuations in Large Gram Matrices with a Variance Profile: A Unified Framework for Sparse CLTs
Rui Wang, Guangming Pan, Dandan Jiang

TL;DR
This paper investigates the spectral behavior of large sparse Gram matrices with a variance profile, revealing a phase transition in fluctuations and providing CLTs applicable to wireless communication models.
Contribution
It establishes a unified framework for spectral fluctuations in sparse Gram matrices, identifying phase transitions and deriving CLTs with explicit corrections for different sparsity regimes.
Findings
Spectral distribution converges to a deterministic limit in both regimes.
A phase transition in fluctuation behavior depending on sparsity level.
Explicit CLTs with correction terms for high-sparsity regimes.
Abstract
We study the asymptotic spectral behavior of high-dimensional random Gram matrices with sparsity and a variance profile, motivated by applications in wireless communications. Specifically, we consider the Gram matrices , where the entries of are independent, centered, heteroscedastic, and sparse through Bernoulli masking. The sparsity level is parameterized as , where ranges from polynomial order up to order . We investigate two asymptotic regimes: a moderate-sparsity regime with fixed , and a high-sparsity regime where . In both regimes, we establish the convergence of the empirical spectral distribution of to a deterministic limit, and further derive central limit theorems for linear spectral statistics using resolvent techniques and martingale difference arguments. Our analysis…
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Taxonomy
TopicsRandom Matrices and Applications · Spectral Theory in Mathematical Physics · Quantum Information and Cryptography
