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Optimal Rates of Convergence for Noisy Sparse Phase Retrieval via Thresholded Wirtinger Flow

10 June 2015
T. Tony Cai
Xiaodong Li
Zongming Ma
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Abstract

This paper considers the noisy sparse phase retrieval problem: recovering a sparse signal x∈Rpx \in \mathbb{R}^px∈Rp from noisy quadratic measurements yj=(aj′x)2+ϵjy_j = (a_j' x )^2 + \epsilon_jyj​=(aj′​x)2+ϵj​, j=1,…,mj=1, \ldots, mj=1,…,m, with independent sub-exponential noise ϵj\epsilon_jϵj​. The goals are to understand the effect of the sparsity of xxx on the estimation precision and to construct a computationally feasible estimator to achieve the optimal rates. Inspired by the Wirtinger Flow [12] proposed for noiseless and non-sparse phase retrieval, a novel thresholded gradient descent algorithm is proposed and it is shown to adaptively achieve the minimax optimal rates of convergence over a wide range of sparsity levels when the aja_jaj​'s are independent standard Gaussian random vectors, provided that the sample size is sufficiently large compared to the sparsity of xxx.

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