Random Matrix Improved Covariance Estimation for a Large Class of Metrics

02/07/2019
by   Malik Tiomoko, et al.
0

Relying on recent advances in statistical estimation of covariance distances based on random matrix theory, this article proposes an improved covariance and precision matrix estimation for a wide family of metrics. The method is shown to largely outperform the sample covariance matrix estimate and to compete with state-of-the-art methods, while at the same time being computationally simpler. Applications to linear and quadratic discriminant analyses also demonstrate significant gains, therefore suggesting practical interest to statistical machine learning.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/08/2019

Random Matrix-Improved Estimation of the Wasserstein Distance between two Centered Gaussian Distributions

This article proposes a method to consistently estimate functionals 1/p∑...
research
10/10/2018

Random matrix-improved estimation of covariance matrix distances

Given two sets x_1^(1),...,x_n_1^(1) and x_1^(2),...,x_n_2^(2)∈R^p (or C...
research
03/11/2023

Towards Consistent Batch State Estimation Using a Time-Correlated Measurement Noise Model

In this paper, we present an algorithm for learning time-correlated meas...
research
09/23/2022

Estimating Model Error Covariances with Artificial Neural Networks

Methods to deal with systematic model errors are an increasingly importa...
research
01/06/2020

Geodesically parameterized covariance estimation

Statistical modeling of spatiotemporal phenomena often requires selectin...
research
08/22/2019

Efficient Capon-Based Approach Exploiting Temporal Windowing For Electric Network Frequency Estimation

Electric Network Frequency (ENF) fluctuations constitute a powerful tool...
research
06/05/2023

A Deep Learning Approach Utilizing Covariance Matrix Analysis for the ISBI Edited MRS Reconstruction Challenge

This work proposes a method to accelerate the acquisition of high-qualit...

Please sign up or login with your details

Forgot password? Click here to reset