2021
DOI: 10.48550/arxiv.2111.04652
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Optimal convex lifted sparse phase retrieval and PCA with an atomic matrix norm regularizer

Abstract: We present novel analysis and algorithms for solving sparse phase retrieval and sparse principal component analysis (PCA) with convex lifted matrix formulations. The key innovation is a new mixed atomic matrix norm that, when used as regularization, promotes low-rank matrices with sparse factors. We show that convex programs with this atomic norm as a regularizer provide near-optimal sample complexity and error rate guarantees for sparse phase retrieval and sparse PCA. While we do not know how to solve the con… Show more

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