Data di Pubblicazione:
2025
Abstract:
Recent advancements in deep reinforcement learning have sparked a growing interest in the application of this approach to solve combinatorial optimization (CO) problems. This paper presents neural combinatorial optimization (NCO) as a framework for constructing functions that work as heuristics for CO problems. Given the rapid expansion of the field and the increasing interest in the topic, this tutorial introduces the main techniques utilized in NCO and explores the current open issues in the field. We define key terms and concepts related to NCO and present the latest developments, using the Knapsack Problem as a running example to complement theoretical explanations. Finally, we analyze prominent works in the field of NCO, with a focus on their application to the Traveling Salesman Problem, which serves as the most extensively studied problem in this domain.
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
Neural Combinatorial Optimization; Reinforcement learning; Deep neural networks; Traveling salesman problem
Elenco autori:
Angioni, D.; Archetti, C.; Speranza, M. G.
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