Fast factorization by similarity in formal concept analysis of data with fuzzy attributes

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摘要

We present a method of fast factorization in formal concept analysis (FCA) of data with fuzzy attributes. The output of FCA consists of a partially ordered collection of clusters extracted from a data table describing objects and their attributes. The collection is called a concept lattice. Factorization by similarity enables us to obtain, instead of a possibly large concept lattice, its factor lattice. The elements of the factor lattice are maximal blocks of clusters which are pairwise similar to degree exceeding a user-specified threshold. The factor lattice thus represents an approximate version of the original concept lattice. We describe a fuzzy closure operator the fixed points of which are just clusters which uniquely determine the blocks of clusters of the factor lattice. This enables us to compute the factor lattice directly from the data without the need to compute the whole concept lattice. We present theoretical solution and examples demonstrating the speed-up of our method.

论文关键词:Tabular data,Clustering,Formal concept analysis,Fuzzy attributes,Similarity,Factorization

论文评审过程:Received 6 March 2006, Revised 24 March 2007, Available online 31 March 2007.

论文官网地址:https://doi.org/10.1016/j.jcss.2007.03.016