Approximations of Schatten Norms via Taylor Expansions

08/07/2018
by   Vladimir Braverman, et al.
0

In this paper we consider symmetric, positive semidefinite (SPSD) matrix A and present two algorithms for computing the p-Schatten norm A_p. The first algorithm works for any SPSD matrix A. The second algorithm works for non-singular SPSD matrices and runs in time that depends on κ = λ_1(A)λ_n(A), where λ_i(A) is the i-th eigenvalue of A. Our methods are simple and easy to implement and can be extended to general matrices. Our algorithms improve, for a range of parameters, recent results of Musco, Netrapalli, Sidford, Ubaru and Woodruff (ITCS 2018) and match the running time of the methods by Han, Malioutov, Avron, and Shin (SISC 2017) while avoiding computations of coefficients of Chebyshev polynomials.

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