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We present a sublinear time algorithm for computing a near optimal low-rank approximation to any positive semidefinite (PSD) Toeplitz matrix T R^d d, given noisy access to its entries. In particular, given entrywise query access to T+E for an arbitrary noise matrix E R^d d, integer rank k d, and error parameter >0, our algorithm runs in time poly (k, (d/) ) and outputs (in factored form) a Toeplitz matrix T R^d d with rank poly (k, (d/) ) satisfying, for some fixed constant C, equation* \|T-T\|F C \\|E\|F, \|T-Tₖ\|F\ + \|T\|F. equation* Here \| \|F is the Frobenius norm and Tₖ is the best (not necessarily Toeplitz) rank-k approximation to T in the Frobenius norm, given by projecting T onto its top k eigenvectors. Our result has the following applications. When E = 0, we obtain the first sublinear time near-relative-error low-rank approximation algorithm for PSD Toeplitz matrices, resolving the main open problem of Kapralov et al. SODA `23, whose algorithm had sublinear query complexity but exponential runtime. Our algorithm can also be applied to approximate the unknown Toeplitz covariance matrix of a multivariate Gaussian distribution, given sample access to this distribution, resolving an open question of Eldar et al. SODA `20. Our algorithm applies sparse Fourier transform techniques to recover a low-rank Toeplitz matrix using its Fourier structure. Our key technical contribution is the first polynomial time algorithm for discrete time off-grid sparse Fourier recovery, which may be of independent interest.
Musco et al. (Sun,) studied this question.
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