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Interfacing Virtual Agents With Collaborative Knowledge: Open Domain Question Answering Using Wikipedia-Based Topic Models

机译:虚拟代理与协作知识的接口:使用基于维基百科的主题模型的开放域问答

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This paper is concerned with the use of conversational agents as an interaction paradigm for accessing open domain encyclopedic knowledge by means of Wikipedia. More precisely, we describe a dialog-based question answering system for German which utilizes Wikipedia-based topic models as a reference point for context detection and answer prediction. We investigate two different perspectives to the task of interfacing virtual agents with collaborative knowledge. First, we exploit the use of Wikipedia categories as a basis for identifying the broader topic of a spoken utterance. Second, we describe how to enhance the conversational behavior of the virtual agent by means of a Wikipedia-based question answering component which incorporates the question topic. At large, our approach identifies topic-related focus terms of a user's question, which are subsequently mapped onto a category taxonomy. Thus, we utilize the taxonomy as a reference point to derive topic labels for a user's question. The employed topic model is thereby based on explicitly given concepts as represented by the document and category structure of the Wikipedia knowledge base. Identified topic categories are subsequently combined with different linguistic filtering methods to improve answer candidate retrieval and reranking. Results show that the topic model approach contributes to an enhancement of the conversational behavior of virtual agents.
机译:本文涉及使用对话代理作为通过Wikipedia访问开放域百科知识的交互范例。更准确地说,我们描述了一种针对德语的基于对话框的问答系统,该系统利用基于Wikipedia的主题模型作为上下文检测和答案预测的参考点。我们研究了将虚拟代理与协作知识交互的任务的两种不同观点。首先,我们利用Wikipedia类别作为识别语音的更广泛主题的基础。其次,我们描述如何通过结合了问题主题的基于维基百科的问题回答组件来增强虚拟代理的对话行为。总体而言,我们的方法确定了用户问题的与主题相关的焦点术语,这些主题随后被映射到类别分类法中。因此,我们利用分类法作为参考点来导出用户问题的主题标签。因此,所采用的主题模型基于由Wikipedia知识库的文档和类别结构表示的明确给定的概念。随后,将识别出的主题类别与不同的语言过滤方法结合起来,以改善候选答案的检索和排名。结果表明,主题模型方法有助于增强虚拟代理的对话行为。

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