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Learning for Spatial Branching: An Algorithm Selection Approach

Authors :
Ghaddar, Bissan
Gómez-Casares, Ignacio
González-Díaz, Julio
González-Rodríguez, Brais
Pateiro-López, Beatriz
Rodríguez-Ballesteros, Sofía
Ghaddar, Bissan
Gómez-Casares, Ignacio
González-Díaz, Julio
González-Rodríguez, Brais
Pateiro-López, Beatriz
Rodríguez-Ballesteros, Sofía
Publication Year :
2022

Abstract

The use of machine learning techniques to improve the performance of branch-and-bound optimization algorithms is a very active area in the context of mixed integer linear problems, but little has been done for non-linear optimization. To bridge this gap, we develop a learning framework for spatial branching and show its efficacy in the context of the Reformulation-Linearization Technique for polynomial optimization problems. The proposed learning is performed offline, based on instance-specific features and with no computational overhead when solving new instances. Novel graph-based features are introduced, which turn out to play an important role for the learning. Experiments on different benchmark instances from the literature show that the learning-based branching rule significantly outperforms the standard rules.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1333766320
Document Type :
Electronic Resource