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Norm and trace estimation with random rank-one vectors (CROSBI ID 286458)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Bujanović, Zvonimir ; Kressner, Daniel Norm and trace estimation with random rank-one vectors // SIAM journal on matrix analysis and applications, 42 (2021), 1; 202-223. doi: 10.1137/20M1331718

Podaci o odgovornosti

Bujanović, Zvonimir ; Kressner, Daniel

engleski

Norm and trace estimation with random rank-one vectors

A few matrix-vector multiplications with random vectors are often sufficient to obtain reasonably good estimates for the norm of a general matrix or the trace of a symmetric positive semi-definite matrix. Several such probabilistic estimators have been proposed and analyzed for standard Gaussian and Rademacher random vectors. In this work, we consider the use of rank-one random vectors, that is, Kronecker products of (smaller) Gaussian or Rademacher vectors. It is not only cheaper to sample such vectors but it can sometimes also be much cheaper to multiply a matrix with a rank-one vector instead of a general vector. In this work, theoretical and numerical evidence is given that the use of rank-one instead of unstructured random vectors still leads to good estimates. In particular, it is shown that our rank-one estimators multiplied with a modest constant constitute, with high probability, upper bounds of the quantity of interest. Partial results are provided for the case of lower bounds. The application of our techniques to condition number estimation for matrix functions is illustrated.

norm of a matrix ; trace of a matrix ; stochastic estimator ; rank-one vectors

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Podaci o izdanju

42 (1)

2021.

202-223

objavljeno

0895-4798

1095-7162

10.1137/20M1331718

Povezanost rada

Matematika

Poveznice
Indeksiranost