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Machine Learning for Spoken Dialogue Management: An Experiment with Speech-Based Database Querying

机译:用于口头对话管理的机器学习:一种基于语音的数据库查询的实验

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Although speech and language processing techniques achieved a relative maturity during the last decade, designing a spoken dialogue system is still a tailoring task because of the great variability of factors to take into account. Rapid design and reusability across tasks of previous work is made very difficult. For these reasons, machine learning methods applied to dialogue strategy optimization has become a leading subject of researches since the mid 90’s. In this paper, we describe an experiment of reinforcement learning applied to the optimization of speech-based database querying. We will especially emphasize on the sensibility of the method relatively to the dialogue modeling parameters in the framework of the Markov decision processes, namely the state space and the reinforcement signal. The evolution of the design will be exposed as well as results obtained on a simple real application.
机译:虽然言语和语言处理技术在过去十年中实现了相对成熟度,但是设计口头对话系统仍然是一个定制的任务,因为考虑到的因素的巨大变化。在以前的工作中的任务方面的快速设计和可重用性非常困难。由于这些原因,应用于对话策略优化的机器学习方法已成为90年代中期以来的研究领先的研究。在本文中,我们描述了应用于应用基于语音的数据库查询的钢筋学习的实验。我们将特别强调在马尔可夫决策过程的框架中相对对话建模参数的方法,即状态空间和加强信号。设计的演变将暴露,以及在简单的真实应用中获得的结果。

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