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            Convex Optimization
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            Convex Optimization

            Jun 11, 2019

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            Alibek Sailanbayev

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            Alp Yurtsever

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            Anastasiia Koloskova

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            About

            Projection onto Minkowski Sums with Application to Constrained Learning¨ We introduce block descent algorithms for projecting onto Minkowski sums of sets. Projection onto such sets is a crucial step in many statistical learning problems, and may regularize complexity of solutions to an optimization problem or arise in dual formulations of penalty methods. We show that projecting onto the Minkowski sum admits simple, efficient algorithms when complications such as overlapping constraints pose ch…

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