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Unsupervised modeling of user actions in a dialog corpus

机译:对话语料库中用户行为的无监督建模

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In data-driven spoken dialog system development, developers should prepare a dialog corpus with semantic annotation. However, the labeling process is a laborious and time consuming task. To reduce human efforts, we propose an unsupervised approach based on non-parametric Bayesian Hidden Markov Model to the problem of modeling user actions. With the non-parametric model, system designers do not need to determine the number and type of user actions. In the experiments, we evaluated the clustering results by comparing them to the human annotation. We also tested a dialog system that used models trained from the automatically annotated corpus with a user simulation.
机译:在数据驱动的口语对话系统开发中,开发人员应准备带有语义注释的对话语料库。然而,贴标签过程是费力且耗时的任务。为了减少人力,我们针对用户行为建模问题提出了一种基于非参数贝叶斯隐马尔可夫模型的无监督方法。使用非参数模型,系统设计人员无需确定用户操作的数量和类型。在实验中,我们通过将聚类结果与人工注释进行比较来评估聚类结果。我们还测试了一个对话系统,该对话系统使用了从带有自动注释的语料库和用户模拟中训练出来的模型。

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