Enhancing Query Expansion through Folksonomies and Semantic Classes

Claudio Biancalana, Fabio Gasparetti, A. Micarelli, G. Sansonetti
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引用次数: 2

Abstract

Adaptive query expansion (QE) allows users to better define their search domain by supplementing the original query with additional terms related to their preferences and information needs. The system we present is an extension of the traditional QE techniques, which rely on the computation of two-dimensional co-occurrence matrices. Our system makes use of three-dimensional co-occurrence matrices, where the added dimension is represented by semantic classes (i.e., categories comprising all the terms that share a semantic property) related to the folksonomy extracted from social book marking services such as delicious, Digg, and Stumble Upon. The results of an indepth experimental evaluation on artificial datasets and real users show that our system outperforms some well-known approaches in the literature, as well as a state-of-the-art search engine.
通过大众分类法和语义类增强查询扩展
自适应查询扩展(QE)允许用户通过使用与他们的偏好和信息需求相关的附加术语补充原始查询,从而更好地定义他们的搜索域。我们提出的系统是传统QE技术的扩展,它依赖于二维共现矩阵的计算。我们的系统使用三维共现矩阵,其中增加的维度由语义类(即,包含共享语义属性的所有术语的类别)表示,这些类别与从delicious、Digg和Stumble Upon等社交图书标记服务中提取的大众分类法相关。对人工数据集和真实用户的深入实验评估结果表明,我们的系统优于文献中一些知名的方法,以及最先进的搜索引擎。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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