建立有效的问答角色

A. Leuski, Ronakkumar Patel, D. Traum, Brandon Kennedy
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引用次数: 137

摘要

本文描述了有限域问答字符的构建和评价方法。本文测试了几种分类技术,包括使用支持向量机的文本分类、基于语言模型的检索和跨语言信息检索技术,其中后者具有最高的成功率。我们还评估了语音识别错误对用户性能的影响,发现在识别达到50% WER之前,检索是鲁棒的。
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Building Effective Question Answering Characters
In this paper, we describe methods for building and evaluation of limited domain question-answering characters. Several classification techniques are tested, including text classification using support vector machines, language-model based retrieval, and cross-language information retrieval techniques, with the latter having the highest success rate. We also evaluated the effect of speech recognition errors on performance with users, finding that retrieval is robust until recognition reaches over 50% WER.
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