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New primal heuristic: Feasible Rounding Approach by Shrink-Opimtize-Round #218

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freemin7 opened this issue Jul 7, 2021 · 1 comment

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@freemin7
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freemin7 commented Jul 7, 2021

A new primal heuristic was recently proposed in The granularity concept in mixed-integer optimization. The idea is to define a subset of the feasible set so it is are guaranteed that at-least one rounding exists that is in the feasible set, optimize this relaxation and then round once to get to a feasible solution faster. This is trivial for Linear constraints but doing it for non-linear constraints might be harder or require an iterative approach, (i haven't done the math). I will also suggest this for Alpine.

@ccoffrin
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Great suggestion, would love to get it added at some point.

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