2022
DOI: 10.48550/arxiv.2204.03316
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Structured Gradient Descent for Fast Robust Low-Rank Hankel Matrix Completion

Abstract: We study the robust matrix completion problem for the low-rank Hankel matrix, which detects the sparse corruptions caused by extreme outliers while we try to recover the original Hankel matrix from the partial observation. In this paper, we explore the convenient Hankel structure and propose a novel non-convex algorithm, coined Hankel Structured Gradient Descent (HSGD), for large-scale robust Hankel matrix completion problems. HSGD is highly computing-and sample-efficient compared to the state-ofthe-arts. The … Show more

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