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Learning Optimal Dialogue Strategies: A Case Study of a Spoken Dialogue Agent for Email

机译:学习最佳对话策略:以电子邮件的语音对话代理为例

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This paper describes a novel method by which a dialogue agent can learn to choose an optimal dialogue strategy. While it is widely agreed that dialogue strategies should be formulated in terms of communicative intentions, there has been little work on automatically optimizing an agent's choices when there are multiple ways to realize a communicative intention. Our method is based on a combination of learning algorithms and empirical evaluation techniques. The larning component of our method is based on algorithms for reinforcement learning, such as dynamic programming and Q-learning. The empirical component uses the PARADISE evaluation framework (Walker et al., 1997) to identify the important performance factors and to provide the performance function needed by the learning algorithm. We illustrate our method with a dialogue agent named ELVIS (EmaiL Voice Interactive System), that supports access to email over the phone. We show how ELVIS can learn to choose among alternate strategies for agent initiative, for reading messages, and for summarizing email folders.
机译:本文介绍了一种新颖的方法,通过该方法,对话代理可以学习选择最佳对话策略。尽管人们普遍认为对话策略应该根据交际意图来制定,但是当有多种方式实现交际意图时,关于自动优化代理人选择的工作很少。我们的方法基于学习算法和经验评估技术的结合。我们方法的主要组成部分是基于强化学习的算法,例如动态编程和Q学习。经验成分使用PARADISE评估框架(Walker等,1997)来识别重要的性能因素,并提供学习算法所需的性能功能。我们使用名为ELVIS(EmaiL语音交互系统)的对话代理来说明我们的方法,该对话代理支持通过电话访问电子邮件。我们将展示ELVIS如何学习如何在代理策略,阅读消息以及汇总电子邮件文件夹的替代策略中进行选择。

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