基于强化学习的对话策略训练的特征选择与参数优化

Teruhisa Misu, H. Kashioka
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引用次数: 5

摘要

本文研究了口语对话系统对话策略强化学习中的特征选择问题。统计对话管理器根据来自当前对话状态和/或系统的信念状态的特征选择系统应该采取的系统操作。然而,在定义系统用于训练对话策略的特征时,从潜在有用的特征中找到一组实际有效的特征并不明显。此外,选择应与对话策略的优化同时进行。在本文中,我们提出了一种增量特征选择方法用于RL优化对话策略,其中对话策略的改进和特征选择同时进行。基于用户模拟器的强化学习对话策略优化实验表明:1)该方法能够以较少的策略迭代次数找到更好的对话策略;2)学习速度与事先进行特征选择的情况相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simultaneous feature selection and parameter optimization for training of dialog policy by reinforcement learning
This paper addresses the problem of feature selection in the reinforcement learning (RL) of the dialog policies of spoken dialog systems. A statistical dialog manager selects the system actions the system should take based on the features derived from the current dialog state and/or the system's belief state. When defining the features used by the system for training the dialog policy, however, finding a set of actually effective features from potentially useful ones is not obvious. In addition, the selection should be done simultaneously with the optimization of the dialog policy. In this paper, we propose an incremental feature selection method for the optimization of a dialog policy by RL, in which improvement of the dialog policy and the feature selection are conducted simultaneously. Experiments in dialog policy optimization by RL with a user simulator demonstrated the following: 1) that the proposed method can find a better dialog policy with fewer policy iterations and 2) the learning speed is comparable with the case where feature selection is conducted in advance.
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