The collaborative relevance in the distributed information retrieval

Adil Enaanai, Aziz Sdigui Doukkali, Ichrak Saif, Hicham Moutachaouik, M. Hain
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Abstract

Relevance is one of the most interesting topics in the information retrieval domain. In this paper, we introduce another method of relevance calculation. We propose to use the implicit opinion of users to calculate relevance. The Implicit judgment of users is injected to the documents by calculating different kinds of weighting. These latter touch several criteria like as user's weight in the query's words, user's profile, user's interest, document's content and the document popularity. In this method, each user is an active element of the system, he searches documents and he makes treatments to provide relevant information to other users in the Network. This is similar as the peer-to-peer systems; unlike that, an element (user) have to manage automatically his data by creating a short view model of his most visited documents, and calculates his relative relevance about each one. The relative relevance is variable according each user, so the final relevance is calculated by the averaging of the elementary relevance of all users. Hence, the name of collaborative relevance.
分布式信息检索中的协同关联
相关性是信息检索领域中最热门的话题之一。本文介绍了另一种相关性计算方法。我们建议使用用户的隐式意见来计算相关性。通过计算不同的权重,将用户的隐式判断注入到文档中。后者涉及几个标准,如用户在查询词中的权重,用户的个人资料,用户的兴趣,文档的内容和文档的流行程度。在这种方法中,每个用户都是系统的一个活动元素,他搜索文档并做出处理,为网络中的其他用户提供相关信息。这与点对点系统类似;与此不同的是,元素(用户)必须通过创建访问次数最多的文档的短视图模型来自动管理其数据,并计算每个文档的相对相关性。每个用户的相对相关性是不同的,因此最终相关性是通过对所有用户的基本相关性求平均值来计算的。因此,协作相关性的名称。
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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