Off-Policy Deep Reinforcement Learning with Analogous Disentangled Exploration

25 Feb 2020Anji LiuYitao LiangGuy Van den Broeck

Off-policy reinforcement learning (RL) is concerned with learning a rewarding policy by executing another policy that gathers samples of experience. While the former policy (i.e. target policy) is rewarding but in-expressive (in most cases, deterministic), doing well in the latter task, in contrast, requires an expressive policy (i.e. behavior policy) that offers guided and effective exploration... (read more)

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