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Quantum-inspired sublinear algorithm for solving low-rank semidefinite programming

Abstract

Semidefinite programming (SDP) is a central topic in mathematical optimization with extensive studies on its efficient solvers. In this paper, we present a proof-of-principle sublinear-time algorithm for solving SDPs with low-rank constraints; specifically, given an SDP with mm constraint matrices, each of dimension nn and rank rr, our algorithm can compute any entry and efficient descriptions of the spectral decomposition of the solution matrix. The algorithm runs in time O(mpoly(logn,r,1/ε))O(m\cdot\mathrm{poly}(\log n,r,1/\varepsilon)) given access to a sampling-based low-overhead data structure for the constraint matrices, where ε\varepsilon is the precision of the solution. In addition, we apply our algorithm to a quantum state learning task as an application. Technically, our approach aligns with 1) SDP solvers based on the matrix multiplicative weight (MMW) framework by Arora and Kale [TOC '12]; 2) sampling-based dequantizing framework pioneered by Tang [STOC '19]. In order to compute the matrix exponential required in the MMW framework, we introduce two new techniques that may be of independent interest: \bullet Weighted sampling: assuming sampling access to each individual constraint matrix A1,,AτA_{1},\ldots,A_{\tau}, we propose a procedure that gives a good approximation of A=A1++AτA=A_{1}+\cdots+A_{\tau}. \bullet Symmetric approximation: we propose a sampling procedure that gives the \emph{spectral decomposition} of a low-rank Hermitian matrix AA. To the best of our knowledge, this is the first sampling-based algorithm for spectral decomposition, as previous works only give singular values and vectors.

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