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Wavelet eigenvalue regression in high dimensions

9 August 2021
P. Abry
B. C. Boniece
G. Didier
H. Wendt
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Abstract

In this paper, we construct the wavelet eigenvalue regression methodology in high dimensions. We assume that possibly non-Gaussian, finite-variance ppp-variate measurements are made of a low-dimensional rrr-variate (r≪pr \ll pr≪p) fractional stochastic process with non-canonical scaling coordinates and in the presence of additive high-dimensional noise. The measurements are correlated both time-wise and between rows. Building upon the asymptotic and large scale properties of wavelet random matrices in high dimensions, the wavelet eigenvalue regression is shown to be consistent and, under additional assumptions, asymptotically Gaussian in the estimation of the fractal structure of the system. We further construct a consistent estimator of the effective dimension rrr of the system that significantly increases the robustness of the methodology. The estimation performance over finite samples is studied by means of simulations.

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