The authors compare multiple methods for incorporating action information into RNN state updates for RL and report empirical results on illustrative domains.
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Investigating Action Encodings in Recurrent Neural Networks in Reinforcement Learning
The authors compare multiple methods for incorporating action information into RNN state updates for RL and report empirical results on illustrative domains.