scholarly journals Hierarchical Reinforcement Learning With Universal Policies for Multistep Robotic Manipulation

Author(s):  
Xintong Yang ◽  
Ze Ji ◽  
Jing Wu ◽  
Yu-Kun Lai ◽  
Changyun Wei ◽  
...  
2021 ◽  
Vol 54 (5) ◽  
pp. 1-35
Author(s):  
Shubham Pateria ◽  
Budhitama Subagdja ◽  
Ah-hwee Tan ◽  
Chai Quek

Hierarchical Reinforcement Learning (HRL) enables autonomous decomposition of challenging long-horizon decision-making tasks into simpler subtasks. During the past years, the landscape of HRL research has grown profoundly, resulting in copious approaches. A comprehensive overview of this vast landscape is necessary to study HRL in an organized manner. We provide a survey of the diverse HRL approaches concerning the challenges of learning hierarchical policies, subtask discovery, transfer learning, and multi-agent learning using HRL. The survey is presented according to a novel taxonomy of the approaches. Based on the survey, a set of important open problems is proposed to motivate the future research in HRL. Furthermore, we outline a few suitable task domains for evaluating the HRL approaches and a few interesting examples of the practical applications of HRL in the Supplementary Material.


Author(s):  
Xenofon Vasilakos ◽  
Monchai Bunyakitanon ◽  
Reza Nejabati ◽  
Dimitra Simeonidou

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