scispace - formally typeset
Open AccessJournal ArticleDOI

Rotational Invariant Estimator for General Noisy Matrices

Reads0
Chats0
TLDR
In this article, the authors investigated the problem of estimating a real symmetric signal matrix C from a noisy observation matrix M in the limit of large dimension, where the noisy measurement M comes either from an arbitrary additive or multiplicative rotational invariant perturbation.
Abstract
We investigate the problem of estimating a given real symmetric signal matrix C from a noisy observation matrix M in the limit of large dimension. We consider the case where the noisy measurement M comes either from an arbitrary additive or multiplicative rotational invariant perturbation. We establish, using the replica method, the asymptotic global law estimate for three general classes of noisy matrices, significantly extending previously obtained results. We give exact results concerning the asymptotic deviations (called overlaps ) of the perturbed eigenvectors away from the true ones, and we explain how to use these overlaps to “clean” the noisy eigenvalues of M. We provide some numerical checks for the different estimators proposed in this paper and we also make the connection with some well-known results of Bayesian statistics.

read more

Citations
More filters
Journal ArticleDOI

Cleaning large correlation matrices: Tools from Random Matrix Theory

TL;DR: This review covers recent results concerning the estimation of large covariance matrices using tools from Random Matrix Theory and establishes empirically the efficacy of the RIE framework, which is found to be superior in this case to all previously proposed methods.
Book ChapterDOI

A Review of Two Decades of Correlations, Hierarchies, Networks and Clustering in Financial Markets

TL;DR: This document is a preliminary version of an in-depth review on the state of the art of clustering financial time series and the study of correlation networks and will form a basis for implementation of an open toolbox of standard tools to study correlations, hierarchies, networks and clustering in financial markets.
Journal ArticleDOI

PCA Meets RG

TL;DR: This work argues that this problem is analogous to the momentum shell renormalization group, and can define relevant and irrelevant operators, where the role of dimensionality is played by properties of the eigenvalue density.
Journal ArticleDOI

Eigenvectors distribution and quantum unique ergodicity for deformed Wigner matrices

Lucas Benigni
- 19 Nov 2017 - 
TL;DR: In this paper, the distribution of eigenvectors for mesoscopic, mean-field perturbations of diagonal matrices in the bulk of the spectrum was analyzed for a generalized Rosenzweig-Porter model.
Posted Content

High dimensional deformed rectangular matrices with applications in matrix denoising

TL;DR: In this article, the authors consider the recovery of a low rank matrix from its noisy observation in two different regimes under the assumption that the rank of the matrix is comparable to that of the noisy observation.
References
More filters
Journal ArticleDOI

Multiple emitter location and signal parameter estimation

TL;DR: In this article, a description of the multiple signal classification (MUSIC) algorithm, which provides asymptotically unbiased estimates of 1) number of incident wavefronts present; 2) directions of arrival (DOA) (or emitter locations); 3) strengths and cross correlations among the incident waveforms; 4) noise/interference strength.
Journal ArticleDOI

Distribution of eigenvalues for some sets of random matrices

TL;DR: In this article, the authors studied the distribution of eigenvalues for two sets of random Hermitian matrices and one set of random unitary matrices in the energy spectra of disordered systems.
Journal ArticleDOI

A well-conditioned estimator for large-dimensional covariance matrices

TL;DR: This paper introduces an estimator that is both well-conditioned and more accurate than the sample covariance matrix asymptotically, that is distribution-free and has a simple explicit formula that is easy to compute and interpret.
Book

Random Matrix Theory and Wireless Communications

TL;DR: A tutorial on random matrices is provided which provides an overview of the theory and brings together in one source the most significant results recently obtained.
Related Papers (5)