用于查询扩展的术语混合图

Fabio Clarizia, F. Colace, M. D. Santo, L. Greco, Paolo Napoletano
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引用次数: 9

摘要

众所周知,提高文本检索系统准确性的一种方法是使用通过主题相关术语编码的附加知识扩展原始查询。在交互式环境中,扩展(通常表示为单词列表)是从通过用户反馈知道其相关性的文档中提取出来的。在本文中,我们认为如果我们采用基于混合词图表示的查询扩展方法而不是基于简单的词列表的方法,则可以提高文本检索系统的准确性。该图由一个有向子图和一个无向子图组成,可以使用基于概率主题模型的术语提取方法从一小部分仅相关的文档(即用户反馈)中自动提取。通过与两个不太复杂的结构进行比较,对所提出的方法进行了评估:一个表示为一组单词对,另一个表示为一个简单的单词列表。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mixed graph of terms for query expansion
It is well known that one way to improve the accuracy of a text retrieval system is to expand the original query with additional knowledge coded through topic-related terms. In the case of an interactive environment, the expansion, which is usually represented as a list of words, is extracted from documents whose relevance is known thanks to the feedback of the user. In this paper we argue that the accuracy of a text retrieval system can be improved if we employ a query expansion method based on a mixed Graph of Terms representation instead of a method based on a simple list of words. The graph, that is composed of a directed and an undirected subgraph, can be automatically extracted from a small set of only relevant documents (namely the user feedback) using a method for term extraction based on the probabilistic Topic Model. The evaluation of the proposed method has been carried out by performing a comparison with two less complex structures: one represented as a set of pairs of words and another that is a simple list of words.
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