基于模糊聚类的协同信息检索模型

F. Naouar, L. Hlaoua, Mohamed Nazih Omri
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引用次数: 4

摘要

协作方法在几个应用领域表现出了兴趣,特别是在满足共享信息需求的信息检索方面。尽管有这种合作,但只要信息量不断增加,搜索相关信息总是一项繁琐的任务,其中一部分是来源,而其他各方则代表对这些来源的评论。在多媒体文档爆炸式增长的今天,多媒体信息检索技术在协作框架下仍然不能满足用户的需求:多媒体类型的文档不能具有丰富的信息,尤其是视频文档。因此,我们认为注释是一种新的信息来源。除了它们的相关性之外,我们注意到注释通常使用一些单词来表达简短的想法,这些单词不能独立于上下文而被理解。要使用它们,分类被认为是必要的。应该考虑新注释的出现,因此应该扩展分类。以虚拟方式确定质心以表示每个注释类。从哪里出发,利用模糊分类的兴趣来知道哪些元素可以属于几个聚类。它在于计算一切现存阶级的重心。这就是为什么;提出了一种基于模糊聚类的标注方法。在实验中,我们尝试考虑一种基于置信度网络的相关反馈系统,该系统将新的相关分类注释作为信息源。为了验证这一模型,我们进行了一系列实验,并取得了令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative Information Retrieval Model Based on Fuzzy Clustering
The collaborative approach has shown interest in several fields of application, particularly in information retrieval to satisfy a need for shared information. Despite this collaboration, the search for relevant information is always a tedious task as long as the mass of information continues to increase, part of which is a source, while other parties represent comments on these sources. It is obvious that nowadays we witness an explosion of multimedia documents so that multimedia information retrieval techniques remain insufficient to satisfy the needs of the user despite the collaborative framework: multimedia-type documents cannot be rich in information and more specifically the video documents. We consider, therefore, annotations as a new source of information. In addition to their relevance, we notice that annotations express generally brief ideas using some words that they cannot be comprehensible independently of his context. To use them, a classification is considered necessary. The emergence of new annotations should be considered and therefore the classification should be extended. A centroid is determined in a virtual way to represent each annotation class. From where, the interest to use the fuzzy classification to know which elements can belong to several clusters. It consists, in a calculation of the center of gravity of all the existing classes. This is the reason why; we proposed a fuzzy clustering-based annotation. In the experiments, we tried to consider a relevance feedback system based on confidence network considering new relevant classified annotations as a source of information. To validate this model, we have carried out a set of experiments and we have obtained encouraging results.
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