2024
DOI: 10.7717/peerj-cs.2141
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A review of reinforcement learning based hyper-heuristics

Cuixia Li,
Xiang Wei,
Jing Wang
et al.

Abstract: The reinforcement learning based hyper-heuristics (RL-HH) is a popular trend in the field of optimization. RL-HH combines the global search ability of hyper-heuristics (HH) with the learning ability of reinforcement learning (RL). This synergy allows the agent to dynamically adjust its own strategy, leading to a gradual optimization of the solution. Existing researches have shown the effectiveness of RL-HH in solving complex real-world problems. However, a comprehensive introduction and summary of the RL-HH fi… Show more

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