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Unsupervised Spoken Language Understanding for a Multi-Domain Dialog System

机译:多域对话系统的无监督口语理解

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摘要

This paper proposes an unsupervised spoken language understanding (SLU) framework for a multi-domain dialog system. Our unsupervised SLU framework applies a non-parametric Bayesian approach to dialog acts, intents and slot entities, which are the components of a semantic frame. The proposed approach reduces the human effort necessary to obtain a semantically annotated corpus for dialog system development. In this study, we analyze clustering results using various evaluation metrics for four dialog corpora. We also introduce a multi-domain dialog system that uses the unsupervised SLU framework. We argue that our unsupervised approach can help overcome the annotation acquisition bottleneck in developing dialog systems. To verify this claim, we report a dialog system evaluation, in which our method achieves competitive results in comparison with a system that uses a manually annotated corpus. In addition, we conducted several experiments to explore the effect of our approach on reducing development costs. The results show that our approach be helpful for the rapid development of a prototype system and reducing the overall development costs.
机译:本文提出了一种用于多域对话系统的无监督口语理解(SLU)框架。我们的无监督SLU框架将非参数贝叶斯方法应用于对话行为,意图和槽位实体,这是语义框架的组成部分。所提出的方法减少了获得用于对话系统开发的语义注释语料库所需的人力。在这项研究中,我们使用四个对话语料库的各种评估指标来分析聚类结果。我们还介绍了使用无监督SLU框架的多域对话系统。我们认为,我们的无监督方法可以帮助克服开发对话系统中的注释获取瓶颈。为了验证这一说法,我们报告了一个对话系统评估,与使用人工注释的语料的系统相比,该方法在竞争性结果上取得了可观的成绩。此外,我们进行了一些实验来探索我们的方法对降低开发成本的影响。结果表明,我们的方法有助于快速开发原型系统并降低总体开发成本。

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