强化学习
噪音(视频)
计算机科学
动作(物理)
参数空间
过程(计算)
集合(抽象数据类型)
空格(标点符号)
人工智能
机器学习
数学
物理
统计
量子力学
操作系统
图像(数学)
程序设计语言
作者
Matthias Plappert,Rein Houthooft,Prafulla Dhariwal,Szymon Sidor,Richard Y. Chen,Xi Chen,Tamim Asfour,Pieter Abbeel,Marcin Andrychowicz
标识
DOI:10.48550/arxiv.1706.01905
摘要
Deep reinforcement learning (RL) methods generally engage in exploratory behavior through noise injection in the action space. An alternative is to add noise directly to the agent's parameters, which can lead to more consistent exploration and a richer set of behaviors. Methods such as evolutionary strategies use parameter perturbations, but discard all temporal structure in the process and require significantly more samples. Combining parameter noise with traditional RL methods allows to combine the best of both worlds. We demonstrate that both off- and on-policy methods benefit from this approach through experimental comparison of DQN, DDPG, and TRPO on high-dimensional discrete action environments as well as continuous control tasks. Our results show that RL with parameter noise learns more efficiently than traditional RL with action space noise and evolutionary strategies individually.
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