2021
DOI: 10.48550/arxiv.2111.03160
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Predictive Machine Learning of Objective Boundaries for Solving COPs

Helge Spieker,
Arnaud Gotlieb

Abstract: Solving Constraint Optimization Problems (COPs) can be dramatically simplified by boundary estimation, that is, providing tight boundaries of cost functions. By feeding a supervised Machine Learning (ML) model with data composed of known boundaries and extracted features of COPs, it is possible to train the model to estimate boundaries of a new COP instance. In this paper, we first give an overview of the existing body of knowledge on ML for Constraint Programming (CP) which learns from problem instances. Seco… Show more

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