Discovering new robust local search algorithms with neuro-evolution
This paper explores a novel approach aimed at overcoming existing challenges in the realm of local search algorithms. Our aim is to improve the decision process that takes place within a local search algorithm so as to make the best possible transitions in the neighborhood at each iteration. To impr...
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Zusammenfassung: | This paper explores a novel approach aimed at overcoming existing challenges
in the realm of local search algorithms. Our aim is to improve the decision
process that takes place within a local search algorithm so as to make the best
possible transitions in the neighborhood at each iteration. To improve this
process, we propose to use a neural network that has the same input information
as conventional local search algorithms. In this paper, which is an extension
of the work [Goudet et al. 2024] presented at EvoCOP2024, we investigate
different ways of representing this information so as to make the algorithm as
efficient as possible but also robust to monotonic transformations of the
problem objective function. To assess the efficiency of this approach, we
develop an experimental setup centered around NK landscape problems, offering
the flexibility to adjust problem size and ruggedness. This approach offers a
promising avenue for the emergence of new local search algorithms and the
improvement of their problem-solving capabilities for black-box problems. |
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DOI: | 10.48550/arxiv.2501.04747 |