Feb. 14, 2024, 5:44 a.m. | Dobrik Georgiev Danilo Numeroso Davide Bacciu Pietro Li\`o

cs.LG updates on arXiv.org arxiv.org

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 …

algorithms cs.lg cs.ne current data generate heuristics long-term nature networks neural networks np-hard optimisation reasoning research solutions training training data

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