基于非策略自然梯度方法的口语对话系统强化学习

Filip Jurcícek
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引用次数: 2

摘要

强化学习方法已成功用于统计对话系统中的对话策略优化。通常,强化技术在策略上学习,即,当系统与用户交互时在线更新对话策略。这种方法的另一种替代方法是off-policy强化学习,它从先前收集的固定对话语料库中离线估计最佳对话策略。提出了一种基于自然策略梯度和重要抽样的非策略强化学习方法。在旅游信息领域的口语对话系统上对该算法进行了评价。实验表明,该方法学习了一种对话策略,显著优于基线手工制作的对话策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reinforcement learning for spoken dialogue systems using off-policy natural gradient method
Reinforcement learning methods have been successfully used to optimise dialogue strategies in statistical dialogue systems. Typically, reinforcement techniques learn on-policy i.e., the dialogue strategy is updated online while the system is interacting with a user. An alternative to this approach is off-policy reinforcement learning, which estimates an optimal dialogue strategy offline from a fixed corpus of previously collected dialogues. This paper proposes a novel off-policy reinforcement learning method based on natural policy gradients and importance sampling. The algorithm is evaluated on a spoken dialogue system in the tourist information domain. The experiments indicate that the proposed method learns a dialogue strategy, which significantly outperforms the baseline handcrafted dialogue policy.
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