Joint Action Representation and Prioritized Experience Replay for Reinforcement Learning in Large Discrete Action Spaces

Xueyu Wei, Wei Xue, Wei Zhao, Yuanxia Shen, Gaohang Yu
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Abstract

In dealing with the large discrete action spaces, a joint action representation and prioritized experience replay method is proposed in this paper, which consists of three modules. In the first module, we use the k-nearest neighbor method to reduce the dimensionality of the original action space, generating a compact action space, and then the critic network is introduced to further evaluate and filter this compact space to obtain the optimal action. Note that the optimal action may have inconsistency with the actual desired action. Then in the second module, we introduce a multi-step update technique to reduce the training variance when storing data in the replay buffer. In the third module, considering the existence of correlation between samples when sampling data, we assign the corresponding weight to the sample experience by calculating the absolute value of temporal difference error and use such a non-uniform sampling method to prioritize the samples for sampling. Experimental results on four benchmark environments demonstrate the effectiveness and efficiency of the proposed method in dealing with the large discrete action spaces.
大型离散动作空间中强化学习的联合动作表示和优先经验重放
针对大型离散动作空间,提出了一种联合动作表示和优先级经验重播方法,该方法由三个模块组成。在第一个模块中,我们使用k近邻法对原始动作空间进行降维,生成一个紧凑的动作空间,然后引入批评网络对该紧凑空间进行进一步的评价和过滤,以获得最优动作。请注意,最佳操作可能与实际所需操作不一致。然后在第二个模块中,我们介绍了一种多步更新技术,以减少在重播缓冲区中存储数据时的训练方差。在第三个模块中,考虑到采样数据时样本之间存在相关性,我们通过计算时间差误差的绝对值为样本经验赋予相应的权重,并使用这种非均匀抽样方法对样本进行优先抽样。在四个基准环境下的实验结果表明了该方法在处理大型离散动作空间方面的有效性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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