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Harvesting Wikipedia Knowledge to Identify Topics in Ongoing Natural Language Dialogs

机译:收集维基百科知识以识别正在进行的自然语言对话框中的主题

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This paper introduces a model harvesting the crowd-sourced encyclopedic knowledge provided by Wikipedia to improve the conversational abilities of an artificial agent. More precisely, we present a model for automatic topic identification in ongoing natural language dialogs. On the basis of a graph-based representation of the Wikipedia category system, our model implements six tasks essential for detecting the topical overlap of coherent dialog contributions. Thereby the identification process operates online to handle dialog streams of constantly changing topical threads in real-time. The realization of the model and its application to our conversational agent aims to improve human-agent conversations by transferring human-like topic awareness to the artificial interlocutor.
机译:本文介绍了一个模型,该模型可以收集维基百科提供的众包百科知识,以提高人工代理的对话能力。更准确地说,我们提出了一种在进行中的自然语言对话中自动识别主题的模型。基于Wikipedia类别系统的基于图的表示形式,我们的模型实现了六个任务,这些任务对于检测相干对话框贡献的主题重叠至关重要。因此,识别过程在线运行,以实时处理不断变化的主题线程的对话流。该模型的实现及其在我们的对话代理中的应用旨在通过将类似于人的主题意识转移给人工对话者来改善人与代理之间的对话。

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