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Computational Statistics & Data Analysis
Volume 51, Issue 1, 1 November 2006, Pages 192-214
The Fuzzy Approach to Statistical Analysis
 
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doi:10.1016/j.csda.2006.04.030    How to Cite or Link Using DOI (Opens New Window)
Copyright © 2006 Elsevier B.V. All rights reserved.

Data analysis with fuzzy clustering methods

Christian DöringCorresponding Author Contact Information, a, E-mail The Corresponding Author, Marie-Jeanne Lesota, E-mail The Corresponding Author and Rudolf Krusea, E-mail The Corresponding Author

aDepartment of Knowledge Processing and Language Engineering, Otto-von-Guericke-University of Magdeburg, Universitätsplatz 2, D-39106 Magdeburg, Germany

Available online 15 May 2006.

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Abstract

An encompassing, self-contained introduction to the foundations of the broad field of fuzzy clustering is presented. The fuzzy cluster partitions are introduced with special emphasis on the interpretation of the two most encountered types of gradual cluster assignments: the fuzzy and the possibilistic membership degrees. A systematic overview of present fuzzy clustering methods is provided, highlighting the underlying ideas of the different approaches. The class of objective function-based methods, the family of alternating cluster estimation algorithms, and the fuzzy maximum likelihood estimation scheme are discussed. The latter is a fuzzy relative of the well-known expectation maximization algorithm and it is compared to its counterpart in statistical clustering. Related issues are considered, concluding with references to selected developments in the area.

Keywords: Probabilistic and possibilistic cluster partitions; Objective function-based methods; Alternating cluster estimation; Fuzzy maximum likelihood estimation; Comparison with expectation maximization; Noise and outlier handling; Current research

Article Outline

1. Introduction
2. What is fuzzy with fuzzy clustering?
3. Fuzzy partitions
4. Fuzzy clustering algorithms
4.1. Objective function-based algorithms
4.1.1. Probabilistic fuzzy clustering
4.1.2. Possibilistic fuzzy clustering
4.1.3. Classical fuzzy AO algorithms
4.2. Possibilistic vs. probabilistic models and algorithms
4.3. Alternating cluster estimation
4.4. Fuzzy maximum likelihood estimation
5. Related issues and current research
5.1. Clustering of non-vectorial data
5.2. Handling noise and outliers
5.3. Cluster validity and unknown number of clusters problem
5.4. Some current research issues
References

















Computational Statistics & Data Analysis
Volume 51, Issue 1, 1 November 2006, Pages 192-214
The Fuzzy Approach to Statistical Analysis
 
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