Fluctuations for matrix-valued Gaussian processes
Mario Diaz, Arturo Jaramillo, Juan Carlos Pardo

TL;DR
This paper analyzes the asymptotic behavior of fluctuations in matrix-valued Gaussian processes, deriving explicit limit distributions for spectral measures and establishing convergence properties under mild covariance conditions.
Contribution
It provides a new explicit characterization of the limit distribution of spectral measure fluctuations for matrix Gaussian processes, extending previous results to a broader class of test functions.
Findings
Explicit limit distribution for spectral measure fluctuations
Stable convergence of the fluctuation processes
Upper bounds for total variation distance
Abstract
We consider a symmetric matrix-valued Gaussian process and its empirical spectral measure process . Under some mild conditions on the covariance function of , we find an explicit expression for the limit distribution of where , for , with each component belonging to a large class of test functions, and More precisely, we establish the stable convergence of and determine its limiting distribution. An upper bound for the total variation distance of the law of to its limiting distribution, for a test function and fixed,…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Neural Networks and Applications · advanced mathematical theories
