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Nonsmooth Sparsity Constrained Optimization via Penalty Alternating Direction Methods

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 Added by Ganzhao Yuan
 Publication date 2021
  fields
and research's language is English
 Authors Ganzhao Yuan




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Nonsmooth sparsity constrained optimization captures a broad spectrum of applications in machine learning and computer vision. However, this problem is NP-hard in general. Existing solutions to this problem suffer from one or more of the following limitations: they fail to solve general nonsmooth problems; they lack convergence analysis; they lead to weaker optimality conditions. This paper revisits the Penalty Alternating Direction Method (PADM) for nonsmooth sparsity constrained optimization problems. We consider two variants of the PADM, i.e., PADM based on Iterative Hard Thresholding (PADM-IHT) and PADM based on Block Coordinate Decomposition (PADM-BCD). We show that the PADM-BCD algorithm finds stronger stationary points of the optimization problem than previous methods. We also develop novel theories to analyze the convergence rate for both the PADM-IHT and the PADM-BCD algorithms. Our theoretical bounds can exploit the inherent sparsity of the optimization problem. Finally, numerical results demonstrate the superiority of PADM-BCD to existing sparse optimization algorithms. Keywords: Sparsity Recovery, Nonsmooth Optimization, Non-Convex Optimization, Block Coordinate Decomposition, Iterative Hard Thresholding, Convergence Analysis



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