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Hadamard Wirtinger Flow for Sparse Phase Retrieval

Abstract

We consider the problem of reconstructing an nn-dimensional kk-sparse signal from a set of noiseless magnitude-only measurements. Formulating the problem as an unregularized empirical risk minimization task, we study the sample complexity performance of gradient descent with Hadamard parametrization, which we call Hadamard Wirtinger flow (HWF). Provided knowledge of the signal sparsity kk, we prove that a single step of HWF is able to recover the support from k(xmax)2k(x^*_{max})^{-2} (modulo logarithmic term) samples, where xmaxx^*_{max} is the largest component of the signal in magnitude. This support recovery procedure can be used to initialize existing reconstruction methods and yields algorithms with total runtime proportional to the cost of reading the data and improved sample complexity, which is linear in kk when the signal contains at least one large component. We numerically investigate the performance of HWF at convergence and show that, while not requiring any explicit form of regularization nor knowledge of kk, HWF adapts to the signal sparsity and reconstructs sparse signals with fewer measurements than existing gradient based methods.

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