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Toward Habitable Assistance from Spoken Dialogue Systems

机译:寻求口语对话系统的宜居帮助

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摘要

Spoken dialogue is increasingly central to systems that assist people. As the tasks that people and machines speak about together become more complex, however, users' dissatisfaction with those systems is an important concern. This paper presents a novel approach to learning for spoken dialogue systems. It describes embedded wizardry, a methodology for learning from skilled people, and applies it to a library whose patrons order books by telephone. To address the challenges inherent in this application, we introduce RFW+, a domain-independent, feature-selection method that considers feature categories. Models learned with RFW+ on embedded-wizard data improve the performance of a traditional spoken dialogue system.
机译:口语对话在帮助人们的系统中越来越重要。但是,随着人们和机器一起谈论的任务变得越来越复杂,用户对这些系统的不满是一个重要的问题。本文提出了一种新颖的口语对话系统学习方法。它描述了嵌入式向导,这是一种向熟练人员学习的方法,并将其应用于图书馆,读者可以通过电话订购书籍。为了解决此应用程序固有的挑战,我们引入了RFW +,这是一种与域无关的,考虑特征类别的特征选择方法。使用RFW +在嵌入式向导数据上学习的模型可提高传统口语对话系统的性能。

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