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Learning TSP requires rethinking generalization

Chaitanya K. Joshi, Quentin Cappart, Louis-Martin Rousseau and Thomas Laurent

Paper (2021)

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Abstract

End-to-end training of neural network solvers for combinatorial optimization problems such as the Travelling Salesman Problem is intractable and inefficient beyond a few hundreds of nodes. While state-of-the-art Machine Learning approaches perform closely to classical solvers when trained on trivially small sizes, they are unable to generalize the learnt policy to larger instances of practical scales. Towards leveraging transfer learning to solve large-scale TSPs, this paper identifies inductive biases, model architectures and learning algorithms that promote generalization to instances larger than those seen in training. Our controlled experiments provide the first principled investigation into such zero-shot generalization, revealing that extrapolating beyond training data requires rethinking the neural combinatorial optimization pipeline, from network layers and learning paradigms to evaluation protocols.

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Additional Information: URL du dépôt original: https://github.com/chaitjo/learning-tsp
Subjects: 2700 Information technology > 2700 Information technology
2700 Information technology > 2706 Software engineering
Department: Department of Computer Engineering and Software Engineering
Department of Mathematics and Industrial Engineering
PolyPublie URL: https://publications.polymtl.ca/51210/
Conference Title: 27th International Conference on Principles and Practice of Constraint Programming (CP 2021)
Conference Location: Montpellier, France
Conference Date(s): 2021-10-25 - 2021-10-29
DOI: 10.4230/lipics.cp.2021.33
Official URL: https://doi.org/10.4230/lipics.cp.2021.33
Date Deposited: 18 Apr 2023 14:59
Last Modified: 02 Oct 2024 04:37
Cite in APA 7: Joshi, C. K., Cappart, Q., Rousseau, L.-M., & Laurent, T. (2021, October). Learning TSP requires rethinking generalization [Paper]. 27th International Conference on Principles and Practice of Constraint Programming (CP 2021), Montpellier, France (21 pages). https://doi.org/10.4230/lipics.cp.2021.33

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