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面向多智能体博弈对抗的对手建模框架 被引量:13
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作者 罗俊仁 张万鹏 +3 位作者 袁唯淋 胡振震 陈少飞 陈璟 《系统仿真学报》 CAS CSCD 北大核心 2022年第9期1941-1955,共15页
对手建模作为多智能体博弈对抗的关键技术,是一种典型的智能体认知行为建模方法。介绍了多智能体博弈对抗几类典型模型、非平稳问题和元博弈相关理论;梳理总结对手建模方法,归纳了对手建模前沿理论,并对其应用前景及面对的挑战进行分析... 对手建模作为多智能体博弈对抗的关键技术,是一种典型的智能体认知行为建模方法。介绍了多智能体博弈对抗几类典型模型、非平稳问题和元博弈相关理论;梳理总结对手建模方法,归纳了对手建模前沿理论,并对其应用前景及面对的挑战进行分析。基于元博弈理论,构建了一个包括对手策略识别与生成、对手策略空间重构和对手利用共三个模块的通用对手建模框架。期望为多智能体博弈对抗对手建模方面的理论与方法研究提供有价值的参考。 展开更多
关键词 多智能体 对手建模 认知行为建模 元博弈
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Transformer in reinforcement learning for decision-making:a survey 被引量:1
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作者 Weilin YUAN Jiaxing chen +4 位作者 shaofei chen Dawei FENG Zhenzhen HU Peng LI Weiwei ZHAO 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2024年第6期763-790,共28页
Reinforcement learning(RL)has become a dominant decision-making paradigm and has achieved notable success in many real-world applications.Notably,deep neural networks play a crucial role in unlocking RL’s potential i... Reinforcement learning(RL)has become a dominant decision-making paradigm and has achieved notable success in many real-world applications.Notably,deep neural networks play a crucial role in unlocking RL’s potential in large-scale decision-making tasks.Inspired by current major success of Transformer in natural language processing and computer vision,numerous bottlenecks have been overcome by combining Transformer with RL for decision-making.This paper presents a multiangle systematic survey of various Transformer-based RL(TransRL)models applied in decision-making tasks,including basic models,advanced algorithms,representative implementation instances,typical applications,and known challenges.Our work aims to provide insights into problems that inherently arise with the current RL approaches,and examines how we can address them with better TransRL models.To our knowledge,we are the first to present a comprehensive review of the recent Transformer research developments in RL for decision-making.We hope that this survey provides a comprehensive review of TransRL models and inspires the RL community in its pursuit of future directions.To keep track of the rapid TransRL developments in the decision-making domains,we summarize the latest papers and their open-source implementations at https://github.com/williamyuanv0/Transformer-in-Reinforcement-Learning-for-Decision-Making-A-Survey. 展开更多
关键词 TRANSFORMER Reinforcement learning(RL) Decision-making(DM) Deep neural network(DNN) Multi-agent reinforcement learning(MARL) Meta-reinforcement learning(Meta-RL)
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