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arxiv: 2208.11010 · v6 · pith:T64PO3B5 · submitted 2022-08-23 · math.OC · cs.DM· cs.LG· stat.CO

Convex mixed-integer optimization with Frank-Wolfe methods

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classification math.OC cs.DMcs.LGstat.CO
keywords mixed-integerconvexlinearalgorithmfeasiblefrank-wolfemethodnode
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Mixed-integer nonlinear optimization encompasses a broad class of problems that present both theoretical and computational challenges. We propose a new type of method to solve these problems based on a branch-and-bound algorithm with convex node relaxations. These relaxations are solved with a Frank-Wolfe algorithm over the convex hull of mixed-integer feasible points instead of the continuous relaxation via calls to a mixed-integer linear solver as the linear minimization oracle. The proposed method computes feasible solutions while working on a single representation of the polyhedral constraints, leveraging the full extent of mixed-integer linear solvers without an outer approximation scheme and can exploit inexact solutions of node subproblems.

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