Low rank approximation of positive semi-definite symmetric matrices using Gaussian elimination and volume sampling

11/30/2020
by   Markus Hegland, et al.
0

Positive semi-definite matrices commonly occur as normal matrices of least squares problems in statistics or as kernel matrices in machine learning and approximation theory. They are typically large and dense. Thus algorithms to solve systems with such a matrix can be very costly. A core idea to reduce computational complexity is to approximate the matrix by one with a low rank. The optimal and well understood choice is based on the eigenvalue decomposition of the matrix. Unfortunately, this is computationally very expensive. Cheaper methods are based on Gaussian elimination but they require pivoting. We will show how invariant matrix theory provides explicit error formulas for an averaged error based on volume sampling. The formula leads to ratios of elementary symmetric polynomials on the eigenvalues. We discuss some new an old bounds and include several examples where an expected error norm can be computed exactly.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/02/2022

Randomized low-rank approximation for symmetric indefinite matrices

The Nyström method is a popular choice for finding a low-rank approximat...
research
07/05/2021

A Note on Error Bounds for Pseudo Skeleton Approximations of Matrices

Due to their importance in both data analysis and numerical algorithms, ...
research
06/01/2017

Krylov Subspace Recycling for Fast Iterative Least-Squares in Machine Learning

Solving symmetric positive definite linear problems is a fundamental com...
research
11/20/2017

Positive semi-definite embedding for dimensionality reduction and out-of-sample extensions

In machine learning or statistics, it is often desirable to reduce the d...
research
08/25/2023

Preconditioning for Generalized Jacobians with the ω-Condition Number

Preconditioning is essential in iterative methods for solving linear sys...
research
02/06/2019

On maximum volume submatrices and cross approximation for symmetric semidefinite and diagonally dominant matrices

The problem of finding a k × k submatrix of maximum volume of a matrix A...
research
05/20/2020

Monte Carlo Estimators for the Schatten p-norm of Symmetric Positive Semidefinite Matrices

We present numerical methods for computing the Schatten p-norm of positi...

Please sign up or login with your details

Forgot password? Click here to reset