基于用户兴趣和领域知识的个性化查询扩展

Xu Jianmin, Liu Chang
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引用次数: 3

摘要

用户兴趣是为用户提供个性化搜索结果的重要依据。本文结合用户兴趣和领域知识的概念,改进了个性化查询扩展。本文提出了一种个性化搜索方法,该方法对用户浏览历史隐含衍生的词进行兴趣权重计算和标注,并与不同的领域字典进行匹配,最后从扩展词与查询词之间基于本体的关联度、兴趣权重和领域比例三个方面选择扩展词。实验表明,该方法是有效的,并且优于传统方法,特别是在查询词属于多个字段的情况下,其优势更加明显。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personalized Query Expansion Based on User Interest and Domain Knowledge
User interest is an important basis for providing users with personalized search results. In this paper, the personalized query expansion is improved by combining the notion of user interest and domain knowledge. We present an approach to personalized search that involves calculating and annotating the interest weight of terms which are implicitly derived from user browsing history, and matching them with different domain dictionaries, finally selecting the expanding terms from three aspects: ontology-based correlation degree between expanding term and query term, interest weight and domain proportion. Our experiments show that the method is effective and is better than the traditional method, especially in the case of the query term belonging to more than one field whose advantage is more obvious.
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