Authors
Shixiang Gu, Ethan Holly, Timothy Lillicrap, Sergey Levine
Publication date
2017/5/29
Conference
2017 IEEE international conference on robotics and automation (ICRA)
Pages
3389-3396
Publisher
IEEE
Description
Reinforcement learning holds the promise of enabling autonomous robots to learn large repertoires of behavioral skills with minimal human intervention. However, robotic applications of reinforcement learning often compromise the autonomy of the learning process in favor of achieving training times that are practical for real physical systems. This typically involves introducing hand-engineered policy representations and human-supplied demonstrations. Deep reinforcement learning alleviates this limitation by training general-purpose neural network policies, but applications of direct deep reinforcement learning algorithms have so far been restricted to simulated settings and relatively simple tasks, due to their apparent high sample complexity. In this paper, we demonstrate that a recent deep reinforcement learning algorithm based on off-policy training of deep Q-functions can scale to complex 3D manipulation …
Total citations
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Scholar articles
S Gu, E Holly, T Lillicrap, S Levine - 2017 IEEE international conference on robotics and …, 2017