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A Machine Learning-Based Approximation of Strong Branching

Abstract

peer reviewedWe present in this paper a new generic approach to variable branching in branch-and-bound for mixed- integer linear problems. Our approach consists in imitating the decisions taken by a good branching strategy, namely strong branching, with a fast approximation. This approximated function is created by a machine learning technique from a set of observed branching decisions taken by strong branching. The philosophy of the approach is similar to reliability branching. However, our approach can catch more complex aspects of observed previous branchings in order to take a branching decision. The experiments performed on randomly generated and MIPLIB problems show promising results

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Open Repository and Bibliography - Liège

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Last time updated on 03/08/2016

This paper was published in Open Repository and Bibliography - Liège.

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