Toward Interpretable Deep Reinforcement Learning with Linear Model U-Trees

16 Jul 2018 Guiliang Liu Oliver Schulte Wang Zhu Qingcan Li

Deep Reinforcement Learning (DRL) has achieved impressive success in many applications. A key component of many DRL models is a neural network representing a Q function, to estimate the expected cumulative reward following a state-action pair... (read more)

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