We consider the problem of approximating the von Neumann entropy of a large, sparse, symmetric positive semidefinite matrix A, defined as tr(f (A)) where f (x) = -x log x. After establishing some useful properties of thismatrix function, we consider the use of both polynomial and rational Krylov subspace algorithms within two types of approximations methods, namely, randomized trace estimators and probing techniques based on graph colorings. We develop error bounds and heuristics which are employed in the implementation of the algorithms. Numerical experiments on density matrices of different types of networks illustrate the performance of the methods.

Computation of the von Neumann entropy of large matrices via trace estimators and rational Krylov methods

Benzi, Michele;Rinelli, Michele;Simunec, Igor
2023

Abstract

We consider the problem of approximating the von Neumann entropy of a large, sparse, symmetric positive semidefinite matrix A, defined as tr(f (A)) where f (x) = -x log x. After establishing some useful properties of thismatrix function, we consider the use of both polynomial and rational Krylov subspace algorithms within two types of approximations methods, namely, randomized trace estimators and probing techniques based on graph colorings. We develop error bounds and heuristics which are employed in the implementation of the algorithms. Numerical experiments on density matrices of different types of networks illustrate the performance of the methods.
2023
Settore MAT/08 - Analisi Numerica
   Metodi basati su matrici e tensori strutturati per problemi di algebra lineare di grandi dimension
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11384/136262
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