Proceedings of the Genetic and Evolutionary Computation Conference Companion 2024
DOI: 10.1145/3638530.3654291
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Instance Selection for Dynamic Algorithm Configuration with Reinforcement Learning: Improving Generalization

Carolin Benjamins,
Gjorgjina Cenikj,
Ana Nikolikj
et al.

Abstract: Dynamic Algorithm Configuration (DAC) addresses the challenge of dynamically setting hyperparameters of an algorithm for a diverse set of instances rather than focusing solely on individual tasks. Agents trained with Deep Reinforcement Learning (RL) offer a pathway to solve such settings. However, the limited generalization performance of these agents has significantly hindered the application in DAC. Our hypothesis is that a potential bias in the training instances limits generalization capabilities. We take … Show more

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