The Local Landscape of Phase Retrieval Under Limited Samples

In this paper, we provide a fine-grained analysis of the local landscape of phase retrieval under the regime with limited samples. Our aim is to ascertain the minimal sample size necessary to guarantee a benign local landscape surrounding global minima in high dimensions. Let and denote the sample size and input dimension, respectively. We first explore the local convexity and establish that when , for almost every fixed point in the local ball, the Hessian matrix must have negative eigenvalues as long as is sufficiently large. Consequently, the local landscape is highly non-convex. We next consider the one-point strong convexity and show that as long as , with high probability, the landscape is one-point strongly convex in the local annulus: , where is the ground truth and is an absolute constant. This implies that gradient descent initialized from any point in this domain can converge to an -loss solution exponentially fast. Furthermore, we show that when , there is a radius of such that one-point convexity breaks in the corresponding smaller local ball. This indicates an impossibility to establish a convergence to exact for gradient descent under limited samples by relying solely on one-point convexity.
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