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Study on the Training Method of Bilateral Group Game Strategy Based on Reinforcement Learning and Enhanced Rule Base
Artificial Intelligence | 更新时间:2025-02-10
    • Study on the Training Method of Bilateral Group Game Strategy Based on Reinforcement Learning and Enhanced Rule Base

    • In the field of bilateral game strategy training, experts have proposed reinforcement learning based methods that significantly enhance the decision-making ability of intelligent agents and provide new solutions for simulating complex environments.
    • Software Guide   Vol. 24, Issue 1, Pages: 15-20(2025)
    • DOI:10.11907/rjdk.232304    

      CLC: TP18
    • Published:15 January 2025

      Received:26 December 2023

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  • CHEN Zhuo,ZHOU Yihua,PU Junsong,et al.Study on the Training Method of Bilateral Group Game Strategy Based on Reinforcement Learning and Enhanced Rule Base[J].Software Guide,2025,24(01):15-20. DOI: 10.11907/rjdk.232304.

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