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A Conditional Gradient Framework for Composite Convex Minimization with Applications to Semidefinite Programming

  • ENAC-IIC-GEL
  • Université Paris-Saclay
  • ETH Zurich
  • Max Planck Institute for Intelligent Systems

Résultats de recherche: Contribution à un journalArticle de conférenceRevue par des pairs

Résumé

We propose a conditional gradient framework for a composite convex minimization template with broad applications. Our approach combines smoothing and homotopy techniques under the CGM framework, and provably achieves the optimal O(1/ k) convergence rate. We demonstrate that the same rate holds if the linear subproblems are solved approximately with additive or multiplicative error. In contrast with the relevant work, we are able to characterize the convergence when the non-smooth term is an indicator function. Specific applications of our framework include the non-smooth minimization, semidefinite programming, and minimization with linear inclusion constraints over a compact domain. Numerical evidence demonstrates the benefits of our framework.

langue originaleAnglais
Pages (de - à)5727-5736
Nombre de pages10
journalProceedings of Machine Learning Research
Volume80
étatPublié - 1 janv. 2018
Modification externeOui
Evénement35th International Conference on Machine Learning, ICML 2018 - Stockholm, Sucde
Durée: 10 juil. 201815 juil. 2018

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