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XTrace: Making the most of every sample in stochastic trace estimation

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The implicit trace estimation problem asks for an approximation of the trace of a square matrix, accessed via matrix-vector products (matvecs). This paper designs new randomized algorithms, XTrace and XNysTrace, for the trace estimation problem by exploiting both variance reduction and the exchangeability principle. For a fixed budget of matvecs, numerical experiments show that the new methods can achieve errors that are orders of magnitude smaller than existing algorithms, such as the Girard-Hutchinson estimator or the Hutch++ estimator. A theoretical analysis confirms the benefits by offering a precise description of the performance of these algorithms as a function of the spectrum of the input matrix. The paper also develops an exchangeable estimator, XDiag, for approximating the diagonal of a square matrix using matvecs.

Ethan N. Epperly, Joel A. Tropp, Robert J. Webber• 2023

Related benchmarks

TaskDatasetResultRank
Log-likelihood estimationCOSMOS 2020 (test)
Mean0.00e+0
9
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