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  5. Learning fine-grained search space pruning and heuristics for combinatorial optimization
 
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Learning fine-grained search space pruning and heuristics for combinatorial optimization

Author(s)
Lauri, Juho  
Dutta, Sourav  
Grassia, Marco  
Ajwani, Deepak  
Uri
http://hdl.handle.net/10197/25093
Date Issued
2023-05-08
Date Available
2023-12-04T15:59:41Z
Abstract
Combinatorial optimization problems arise naturally in a wide range of applications from diverse domains. Many of these problems are NP-hard and designing efficient heuristics for them requires considerable time, effort and experimentation. On the other hand, the number of optimization problems in the industry continues to grow. In recent years, machine learning techniques have been explored to address this gap. In this paper, we propose a novel framework for leveraging machine learning techniques to scale-up exact combinatorial optimization algorithms. In contrast to the existing approaches based on deep-learning, reinforcement learning and restricted Boltzmann machines that attempt to directly learn the output of the optimization problem from its input (with limited success), our framework learns the relatively simpler task of pruning the elements in order to reduce the size of the problem instances. In addition, our framework uses only interpretable learning models based on intuitive local features and thus the learning process provides deeper insights into the optimization problem and the instance class, that can be used for designing better heuristics. For the classical maximum clique enumeration problem, we show that our framework can prune a large fraction of the input graph (around 99% of nodes in case of sparse graphs) and still detect almost all of the maximum cliques. Overall, this results in several fold speedups of state-of-the-art algorithms. Furthermore, the classification model used in our framework highlights that the chi-squared value of neighborhood degree has a statistically significant correlation with the presence of a node in a maximum clique, particularly in dense graphs which constitute a significant challenge for modern solvers. We leverage this insight to design a novel heuristic we call ALTHEA for the maximum clique detection problem, outperforming the state-of-the-art for dense graphs.
Other Sponsorship
Access provided by IREL Consortium c/o Maynooth University The Library Maynooth University
Type of Material
Journal Article
Publisher
Springer
Journal
Journal of Heuristics
Volume
29
Issue
2-3
Start Page
313
End Page
347
Copyright (Published Version)
2023 The Authors
Subjects

Combinatorial optimiz...

Machine learning

Maximum clique

Heuristics

DOI
10.1007/s10732-023-09512-z
Language
English
Status of Item
Peer reviewed
ISSN
1381-1231
This item is made available under a Creative Commons License
https://creativecommons.org/licenses/by-nc-nd/3.0/ie/
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j-heur-published_23.pdf

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Owning collection
Computer Science Research Collection

Item descriptive metadata is released under a CC-0 (public domain) license: https://creativecommons.org/public-domain/cc0/.
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