A Penalty-Free Infeasible Approach for a Class of Nonsmooth Optimization Problems Over the Stiefel Manifold

Journal of Scientific Computing(2024)

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摘要
Inspired by penalty-free approaches for smooth optimization problems, we propose a sequential linearized proximal gradient method (SLPG) for a class of optimization problems with orthogonality constraints and nonsmooth regularization term. This approach alternatively takes tangential steps and normal steps to improve the optimality and feasibility respectively. In SLPG, the orthonormalization process is invoked only once at the last step if high precision for feasibility is needed, showing that main iterations in SLPG are orthonormalization-free. Besides, both the tangential steps and normal steps do not involve the penalty parameter, and thus SLPG is penalty-free and avoids the inefficiency caused by possible inappropriate penalty parameter. We analyze the global convergence properties of SLPG where the tangential steps are inexactly computed. Numerical experiments illustrate the advantages of SLPG when compared with existing first-order methods.
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关键词
Stiefel manifold,Riemannian optimization,Penalty-free,Proximal gradient method,15A18,65F15,65K05,90C06
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