强化学习
马尔可夫决策过程
计算机科学
Softmax函数
重采样
控制(管理)
人工智能
机器学习
马尔可夫过程
人工神经网络
数学
统计
作者
Zhimin Hou,Jiajun Fei,Yuelin Deng,Jing Xu
标识
DOI:10.1109/tie.2020.3038072
摘要
Hierarchical reinforcement learning (HRL) can learn the decomposed subpolicies corresponding to the local state-space; therefore, it is a promising solution to complex robotic assembly control tasks with fewer interactions with environments. Most existing HRL algorithms often require on-policy learning, where resampling is necessary for every training step. In this article, we propose a data-efficient HRL via off-policy learning with three main contributions. First, two augmented MDPs (Markov decision processes) are reformulated to learn the higher level policy and lower level policy from the same samples. Second, to learn higher level policy that leads to efficient exploration, a softmax gating policy is derived to determine the lower level policy for interacting with the environment. Third, to learn the lower level policies via off-policy samples from one lower level replay buffer, the higher level policy derived by the option-value network is adopted to select the appropriate option for learning the corresponding lower level policy. The data-efficiency performance of our algorithm is validated on two simulations and real-world robotic dual peg-in-hole assembly tasks.
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