Fuzzy conceptual-based search engine using conceptual semantic indexing

M. Nikravesh
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引用次数: 26

Abstract

Retrieving relevant information is a crucial component of cased-based reasoning systems for Internet applications such as search engines. The task is to use user-defined queries to retrieve useful information according to certain measures. Even though techniques exist for locating exact matches, finding relevant partial matches might be a problem. It may not be also easy to specify query requests precisely and completely - resulting in a situation known as a fuzzy-querying. It is usually not a problem for small domains, but for large repositories such as World Wide Web, a request specification becomes a bottleneck. Thus, a flexible retrieval algorithm is required, allowing for imprecise specification or search. Therefore, we envision that non-classical techniques such as fuzzy logic based-clustering methodology based on perception, fuzzy similarity, fuzzy aggregation, and FLSI for automatic information retrieval and search with partial matches are required.
使用概念语义索引的模糊概念搜索引擎
检索相关信息是搜索引擎等互联网应用的基于案例推理系统的重要组成部分。任务是使用用户定义的查询,根据一定的度量来检索有用的信息。尽管存在定位精确匹配的技术,但找到相关的部分匹配可能是一个问题。精确而完整地指定查询请求可能也不容易——这导致了一种称为模糊查询的情况。对于小域来说,这通常不是问题,但是对于像World Wide Web这样的大型存储库,请求规范会成为瓶颈。因此,需要灵活的检索算法,允许不精确的规范或搜索。因此,我们设想需要非经典技术,如基于感知的模糊逻辑聚类方法、模糊相似性、模糊聚合和FLSI,用于自动信息检索和部分匹配搜索。
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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