arXiv Analytics

Sign in

arXiv:2401.02815 [math.PR]AbstractReferencesReviewsResources

On the empirical spectral distribution of large wavelet random matrices based on mixed-Gaussian fractional measurements in moderately high dimensions

Patrice Abry, Gustavo Didier, Oliver Orejola, Herwig Wendt

Published 2024-01-05Version 1

In this paper, we characterize the convergence of the (rescaled logarithmic) empirical spectral distribution of wavelet random matrices. We assume a moderately high-dimensional framework where the sample size $n$, the dimension $p(n)$ and, for a fixed integer $j$, the scale $a(n)2^j$ go to infinity in such a way that $\lim_{n \rightarrow \infty}p(n)\cdot a(n)/n = \lim_{n \rightarrow \infty} o(\sqrt{a(n)/n})= 0$. We suppose the underlying measurement process is a random scrambling of a sample of size $n$ of a growing number $p(n)$ of fractional processes. Each of the latter processes is a fractional Brownian motion conditionally on a randomly chosen Hurst exponent. We show that the (rescaled logarithmic) empirical spectral distribution of the wavelet random matrices converges weakly, in probability, to the distribution of Hurst exponents.

Related articles: Most relevant | Search more
arXiv:1610.05186 [math.PR] (Published 2016-10-17)
Empirical spectral distributions of sparse random graphs
arXiv:2103.03204 [math.PR] (Published 2021-03-04)
On the empirical spectral distribution for certain models related to sample covariance matrices with different correlations
arXiv:1902.08428 [math.PR] (Published 2019-02-22)
Convergence Rate of Empirical Spectral Distribution of Random Matrices from Linear Codes