Fuzzy Modeling of User Needs for Improvement of Web Search Queries

V. Snás̃el, P. Kromer, P. Musílek, H. Nyongesa, D. Húsek
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引用次数: 6

Abstract

As the volume and variety of information sources continues to grow, especially on the World Wide Web (WWW), the requirements imposed on search applications are steadily increasing. The amount of available data is growing and so do user demands. Users do not need more information to deal with. Rather, they require that the information search process provides them with sensible responses to their requests. There are several problems complicating the search process and lowering the search effectiveness: users rarely present search queries in the form that optimally represents their information needs; the measure of a document's relevance is often highly subjective among different users; and information sources contain heterogeneous documents, stored in multiple formats and without a standardized representation. To alleviate these problems, queries can be extended using the concepts of fuzzy sets. The search system described in this paper models users' information needs in a framework of fuzzy sets, with the aid of two metrics that determine the "fitness for use" of the retrieved documents. With the aid of this parameter, an evolutionary computing system performs optimization of search queries based on individual user models. This way, an effective search system is produced, which is able to continuously learn from reinforcements provided by the users.
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基于用户需求的Web搜索查询改进模糊建模
随着信息源的数量和种类的不断增长,特别是在万维网(WWW)上,对搜索应用程序的要求也在稳步增长。可用数据的数量在增长,用户需求也在增长。用户不需要处理更多的信息。相反,它们要求信息搜索过程为它们的请求提供合理的响应。有几个问题使搜索过程复杂化并降低了搜索效率:用户很少以最能代表他们信息需求的形式呈现搜索查询;对于不同的用户来说,衡量文档的相关性通常是非常主观的;信息源包含异构文档,以多种格式存储,没有标准化表示。为了缓解这些问题,可以使用模糊集的概念对查询进行扩展。本文描述的搜索系统在模糊集框架中对用户的信息需求进行建模,并借助于确定检索文档“适合使用”的两个指标。在此参数的帮助下,进化计算系统基于单个用户模型执行搜索查询的优化。这样,就产生了一个有效的搜索系统,它能够不断地从用户提供的增援中学习。
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