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arxiv: 2009.14114 · v3 · pith:FHCVZKH4 · submitted 2020-09-29 · math.OC · cs.LG

Projection-Free Adaptive Gradients for Large-Scale Optimization

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classification math.OC cs.LG
keywords adaptivealgorithmsoptimizationcomputationalfirst-orderfrank-wolfegradientshandling
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The complexity in large-scale optimization can lie in both handling the objective function and handling the constraint set. In this respect, stochastic Frank-Wolfe algorithms occupy a unique position as they alleviate both computational burdens, by querying only approximate first-order information from the objective and by maintaining feasibility of the iterates without using projections. In this paper, we improve the quality of their first-order information by blending in adaptive gradients. We derive convergence rates and demonstrate the computational advantage of our method over the state-of-the-art stochastic Frank-Wolfe algorithms on both convex and nonconvex objectives. The experiments further show that our method can improve the performance of adaptive gradient algorithms for constrained optimization.

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