2020
DOI: 10.48550/arxiv.2007.00153
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Conditional Gradient Methods for Convex Optimization with General Affine and Nonlinear Constraints

Abstract: Conditional gradient methods have attracted much attention in both machine learning and optimization communities recently. These simple methods can guarantee the generation of sparse solutions. In addition, without the computation of full gradients, they can handle huge-scale problems sometimes even with an exponentially increasing number of decision variables. This paper aims to significantly expand the application areas of these methods by presenting new conditional gradient methods for solving convex optimi… Show more

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