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Quantum Algorithms for Escaping from Saddle Points

20 July 2020
Chenyi Zhang
Jiaqi Leng
Tongyang Li
ArXiv (abs)PDFHTML
Abstract

We initiate the study of quantum algorithms for escaping from saddle points with provable guarantee. Given a function f ⁣:Rn→Rf\colon\mathbb{R}^{n}\to\mathbb{R}f:Rn→R, our quantum algorithm outputs an ϵ\epsilonϵ-approximate second-order stationary point using O~(log⁡2n/ϵ1.75)\tilde{O}(\log^{2} n/\epsilon^{1.75})O~(log2n/ϵ1.75) queries to the quantum evaluation oracle (i.e., the zeroth-order oracle). Compared to the classical state-of-the-art algorithm by Jin et al. with O~(log⁡6n/ϵ1.75)\tilde{O}(\log^{6} n/\epsilon^{1.75})O~(log6n/ϵ1.75) queries to the gradient oracle (i.e., the first-order oracle), our quantum algorithm is polynomially better in terms of nnn and matches its complexity in terms of 1/ϵ1/\epsilon1/ϵ. Our quantum algorithm is built upon two techniques: First, we replace the classical perturbations in gradient descent methods by simulating quantum wave equations, which constitutes the polynomial speedup in nnn for escaping from saddle points. Second, we show how to use a quantum gradient computation algorithm due to Jordan to replace the classical gradient queries by quantum evaluation queries with the same complexity. Finally, we also perform numerical experiments that support our quantum speedup.

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