On Dimension-free Tail Inequalities for Sums of Random Matrices and Applications

10/08/2019
by   Chao Zhang, et al.
0

In this paper, we present a new framework to obtain tail inequalities for sums of random matrices. Compared with existing works, our tail inequalities have the following characteristics: 1) high feasibility–they can be used to study the tail behavior of various matrix functions, e.g., arbitrary matrix norms, the absolute value of the sum of the sum of the j largest singular values (resp. eigenvalues) of complex matrices (resp. Hermitian matrices); and 2) independence of matrix dimension — they do not have the matrix-dimension term as a product factor, and thus are suitable to the scenario of high-dimensional or infinite-dimensional random matrices. The price we pay to obtain these advantages is that the convergence rate of the resulting inequalities will become slow when the number of summand random matrices is large. We also develop the tail inequalities for matrix random series and matrix martingale difference sequence. We also demonstrate usefulness of our tail bounds in several fields. In compressed sensing, we employ the resulted tail inequalities to achieve a proof of the restricted isometry property when the measurement matrix is the sum of random matrices without any assumption on the distributions of matrix entries. In probability theory, we derive a new upper bound to the supreme of stochastic processes. In machine learning, we prove new expectation bounds of sums of random matrices matrix and obtain matrix approximation schemes via random sampling. In quantum information, we show a new analysis relating to the fractional cover number of quantum hypergraphs. In theoretical computer science, we obtain randomness-efficient samplers using matrix expander graphs that can be efficiently implemented in time without dependence on matrix dimensions.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/09/2011

Dimension-free tail inequalities for sums of random matrices

We derive exponential tail inequalities for sums of random matrices with...
research
09/04/2018

Matrix Infinitely Divisible Series: Tail Inequalities and Applications in Optimization

In this paper, we study tail inequalities of the largest eigenvalue of a...
research
10/18/2022

Dimension-free Bounds for Sum of Dependent Matrices and Operators with Heavy-Tailed Distribution

We study the deviation inequality for a sum of high-dimensional random m...
research
06/21/2022

Hoffmann-Jørgensen Inequalities for Random Walks on the Cone of Positive Definite Matrices

We consider random walks on the cone of m × m positive definite matrices...
research
05/28/2021

On the condition number of the shifted real Ginibre ensemble

We derive an accurate lower tail estimate on the lowest singular value σ...
research
08/18/2010

Learning Functions of Few Arbitrary Linear Parameters in High Dimensions

Let us assume that f is a continuous function defined on the unit ball o...
research
05/23/2021

Compressing Heavy-Tailed Weight Matrices for Non-Vacuous Generalization Bounds

Heavy-tailed distributions have been studied in statistics, random matri...

Please sign up or login with your details

Forgot password? Click here to reset