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Main Authors: Chalumeau, Felix, Shabe, Refiloe, De Nicola, Noah, Pretorius, Arnu, Barrett, Thomas D., Grinsztajn, Nathan
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.16424
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author Chalumeau, Felix
Shabe, Refiloe
De Nicola, Noah
Pretorius, Arnu
Barrett, Thomas D.
Grinsztajn, Nathan
author_facet Chalumeau, Felix
Shabe, Refiloe
De Nicola, Noah
Pretorius, Arnu
Barrett, Thomas D.
Grinsztajn, Nathan
contents Routing Problems are central to many real-world applications, yet remain challenging due to their (NP-)hard nature. Amongst existing approaches, heuristics often offer the best trade-off between quality and scalability, making them suitable for industrial use. While Reinforcement Learning (RL) offers a flexible framework for designing heuristics, its adoption over handcrafted heuristics remains incomplete. Existing learned methods still lack the ability to adapt to specific instances and fully leverage the available computational budget. Current best methods either rely on a collection of pre-trained policies, or on RL fine-tuning; hence failing to fully utilize newly available information within the constraints of the budget. In response, we present MEMENTO, an approach that leverages memory to improve the search of neural solvers at inference. MEMENTO leverages online data collected across repeated attempts to dynamically adjust the action distribution based on the outcome of previous decisions. We validate its effectiveness on the Traveling Salesman and Capacitated Vehicle Routing problems, demonstrating its superiority over tree-search and policy-gradient fine-tuning; and showing that it can be zero-shot combined with diversity-based solvers. We successfully train all RL auto-regressive solvers on large instances, and verify MEMENTO's scalability and data-efficiency: pushing the state-of-the-art on 11 out of 12 evaluated tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2406_16424
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Memory-Enhanced Neural Solvers for Routing Problems
Chalumeau, Felix
Shabe, Refiloe
De Nicola, Noah
Pretorius, Arnu
Barrett, Thomas D.
Grinsztajn, Nathan
Artificial Intelligence
Machine Learning
Routing Problems are central to many real-world applications, yet remain challenging due to their (NP-)hard nature. Amongst existing approaches, heuristics often offer the best trade-off between quality and scalability, making them suitable for industrial use. While Reinforcement Learning (RL) offers a flexible framework for designing heuristics, its adoption over handcrafted heuristics remains incomplete. Existing learned methods still lack the ability to adapt to specific instances and fully leverage the available computational budget. Current best methods either rely on a collection of pre-trained policies, or on RL fine-tuning; hence failing to fully utilize newly available information within the constraints of the budget. In response, we present MEMENTO, an approach that leverages memory to improve the search of neural solvers at inference. MEMENTO leverages online data collected across repeated attempts to dynamically adjust the action distribution based on the outcome of previous decisions. We validate its effectiveness on the Traveling Salesman and Capacitated Vehicle Routing problems, demonstrating its superiority over tree-search and policy-gradient fine-tuning; and showing that it can be zero-shot combined with diversity-based solvers. We successfully train all RL auto-regressive solvers on large instances, and verify MEMENTO's scalability and data-efficiency: pushing the state-of-the-art on 11 out of 12 evaluated tasks.
title Memory-Enhanced Neural Solvers for Routing Problems
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2406.16424