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A Text Mining Approach for Definition Question Answering

机译:文本挖掘的定义问题解答方法

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摘要

This paper describes a method for definition question answering based on the use of surface text patterns. The method is specially suited to answer questions about person's positions and acronym's descriptions. It considers two main steps. First, it applies a sequence-mining algorithm to discover a set of definition-related text patterns from the Web. Then, using these patterns, it extracts a collection of concept-description pairs from a target document database, and applies the sequence-mining algorithm to determine the most adequate answer to a given question. Experimental results on the Spanish CLEF 2005 data set indicate that this method can be a practical solution for answering this kind of definition questions, reaching a precision as high as 84%.
机译:本文介绍了一种基于表面文字模式的定义问题解答的方法。该方法特别适合回答有关人的位置和首字母缩写的描述的问题。它考虑了两个主要步骤。首先,它应用序列挖掘算法从Web发现一组与定义相关的文本模式。然后,使用这些模式,它从目标文档数据库中提取概念描述对的集合,并应用序列挖掘算法来确定对给定问题的最适当答案。西班牙CLEF 2005数据集上的实验结果表明,该方法可以回答此类定义问题,是一种实用的解决方案,精度高达84%。

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