Cite this paper
T. Kuremoto, K. Hashiguchi, K. Morisaki, S. Watanabe, K. Kobayashi, S. Mabu and M. Obayashi, "Multiple Action Sequence Learning and Automatic Generation for a Humanoid Robot Using RNNPB and Reinforcement Learning," Journal of Software Engineering and Applications
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