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Knowledge representation and processing with formal concept analysis

机译:形式化概念分析的知识表示和处理

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During the last three decades, formal concept analysis (FCA) became a well-known formalism in data analysis and knowledge discovery because of its usefulness in important domains of knowledge discovery in databases (KDD) such as ontology engineering, association rule mining, machine learning, as well as relation to other established theories for representing knowledge processing, like description logics, conceptual graphs, and rough sets. In early days, FCA was sometimes misconceived as a static crisp hardly scalable formalism for binary data tables. In this paper, we will try to show that FCA actually provides support for processing large dynamical complex (may be uncertain) data augmented with additional knowledge. (c) 2013 Wiley Periodicals, Inc.
机译:在过去的三十年中,形式概念分析(FCA)成为数据分析和知识发现中的一种众所周知的形式主义,因为它在数据库(KDD)知识发现的重要领域中很有用,例如本体工程,关联规则挖掘,机器学习,以及与其他用于表示知识处理的既定理论的关系,例如描述逻辑,概念图和粗糙集。在早期,FCA有时被误认为二进制数据表的静态清晰,几乎不可扩展的形式主义。在本文中,我们将尝试证明FCA实际上为处理具有附加知识的大型动态复杂(可能不确定)数据提供了支持。 (c)2013 Wiley期刊公司

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