Solving NP-hard/complete combinatorial problems with neural networks is a challenging research area that aims to surpass classical approximate algorithms. The long-term objective is to outperform hand-designed heuristics for NP-hard/complete problems by learning to generate superior solutions solely from training data. Current neural-based methods for solving CO problems often overlook the inherent “algorithmic” nature of the problems. In contrast, heuristics designed for CO problems, e.g. TSP, frequently leverage well-established algorithms, such as those for finding the minimum spanning tree. In this paper, we propose leveraging recent advancements in neural algorithmic reasoning to improve the learning of CO problems. Specifically, we suggest pre-training our neural model on relevant algorithms before training it on CO instances. Our results demonstrate that by using this learning setup, we achieve superior performance compared to non-algorithmically informed deep learning models.

Neural Algorithmic Reasoning for Combinatorial Optimisation / Georgiev, D.; Numeroso, D.; Bacciu, D.; Lio, P.. - 231:(2023), pp. 281-2815. (Intervento presentato al convegno 2nd Learning on Graphs Conference, LOG 2023 tenutosi a Virtual, Online).

Neural Algorithmic Reasoning for Combinatorial Optimisation

Lio P.
2023

Abstract

Solving NP-hard/complete combinatorial problems with neural networks is a challenging research area that aims to surpass classical approximate algorithms. The long-term objective is to outperform hand-designed heuristics for NP-hard/complete problems by learning to generate superior solutions solely from training data. Current neural-based methods for solving CO problems often overlook the inherent “algorithmic” nature of the problems. In contrast, heuristics designed for CO problems, e.g. TSP, frequently leverage well-established algorithms, such as those for finding the minimum spanning tree. In this paper, we propose leveraging recent advancements in neural algorithmic reasoning to improve the learning of CO problems. Specifically, we suggest pre-training our neural model on relevant algorithms before training it on CO instances. Our results demonstrate that by using this learning setup, we achieve superior performance compared to non-algorithmically informed deep learning models.
2023
2nd Learning on Graphs Conference, LOG 2023
Graph Theory; Neural Network; Graph Convolutional Network
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Neural Algorithmic Reasoning for Combinatorial Optimisation / Georgiev, D.; Numeroso, D.; Bacciu, D.; Lio, P.. - 231:(2023), pp. 281-2815. (Intervento presentato al convegno 2nd Learning on Graphs Conference, LOG 2023 tenutosi a Virtual, Online).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1726845
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