Feb. 2, 2024, 9:45 p.m. | Xuecheng Niu Akinori Ito Takashi Nose

cs.LG updates on arXiv.org arxiv.org

Training task-oriented dialog agents based on reinforcement learning is time-consuming and requires a large number of interactions with real users. How to grasp dialog policy within limited dialog experiences remains an obstacle that makes the agent training process less efficient. In addition, most previous frameworks start training by randomly choosing training samples, which differs from the human learning method and hurts the efficiency and stability of training. Therefore, we propose Scheduled Curiosity-Deep Dyna-Q (SC-DDQ), a curiosity-driven curriculum learning framework based …

agent agents cs.ai cs.lg curiosity exploration frameworks interactions policy process reinforcement reinforcement learning training

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