Success Probability of Exploration: a Concrete Analysis of Learning Efficiency

2 Dec 2016 Liangpeng Zhang Ke Tang Xin Yao

Exploration has been a crucial part of reinforcement learning, yet several important questions concerning exploration efficiency are still not answered satisfactorily by existing analytical frameworks. These questions include exploration parameter setting, situation analysis, and hardness of MDPs, all of which are unavoidable for practitioners... (read more)

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