信息检索系统中基于层次fca的文本文档概念模型

P. Butka, J. Pócsová
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引用次数: 5

摘要

在海量文档中搜索相关文档是语义网和知识技术领域的关键任务之一。本文分析和设计了一种利用语义上无注释的文本文档集自动生成的特定概念模型来改进信息检索的方法。该概念模型将局部应用的形式概念分析(FCA)和特定模型的聚类方法结合到一个结构中,适合于支持信息检索过程,并可与标准全文检索相结合。形式概念分析(Formal Concept Analysis, FCA)是文本文档领域概念建模过程中可以应用的方法之一。经典FCA(二进制表数据)的扩展是单侧模糊版本,它处理对象属性表中的实值(对于文本文档的矢量表示,是文档项矩阵)。在我们的方法中,使用一些分区聚类算法将起始文档集分解为更小的类似文档集。然后使用FCA方法为每个聚类构建一个概念格,并使用聚类算法将这些基于FCA的模型组合成概念格的层次结构。最后,我们定义了标准全文搜索和概念搜索(使用提取的概念层次)相结合的IR系统的基本细节和方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchical FCA-based conceptual model of text documents used in information retrieval system
Searching for relevant documents in large sets of documents is one of the key tasks in the areas of semantic web and knowledge technologies. This paper deals with analysis and design of improvement for information retrieval (IR) using specific conceptual model automatically created from semantically non-annotated set of text documents. This conceptual model combines locally applied Formal Concept Analysis (FCA) and agglomerative clustering of particular models into one structure, which is suitable to support information retrieval process and can be combined with standard full-text search. Formal Concept Analysis (FCA) is one of the approaches which can be applied in process of conceptual modeling in domain of text documents. Extension of classic FCA (binary table data) is one-sided fuzzy version that works with real values in the object-attribute table (document-term matrix in case of vector representation of text documents). In our approach, starting set of documents is decomposed to smaller sets of similar documents with the use of some partitional clustering algorithm. Then one concept lattice is built for every cluster using FCA method and these FCA-based models are combined to hierarchy of concept lattices using agglomerative clustering algorithm. Finally, we define basic details and methods of IR system that combines standard full-text search and conceptual search (using extracted concept hierarchy).
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