Title :
Fuzzy clustering of data with uncertainties using minimum and maximum distances based on L1 metric
Author :
Takata, Osamu ; Miyamoto, Sadaaki ; Umayahara, Kazut Aka
Author_Institution :
Doctoral Program in Eng., Tsukuba Univ., Ibaraki, Japan
Abstract :
Fuzzy c-means is well-known among the various methods of fuzzy cluster analysis. L1-based fuzzy c-means has also been studied in recent years. This paper discusses the L1-based fuzzy c-means of data with fuzzy uncertainties. The data unit is supposed to be the Cartesian product of fuzzy numbers. The metric between a data unit with uncertainty and a cluster center is defined using minimum and maximum distances. The fuzzy c-means algorithm is an alternative procedure for the optimization of the cluster center and the fuzzy set membership, while the solution of the cluster center for uncertain data cannot be obtained directly. An algorithm for the solution of cluster centers based on the L1 metric for uncertain data is developed in this paper. Using this algorithm, an exact alternate optimization procedure is obtained. Numerical examples show that the results for uncertain data are different from the results for data without uncertainties
Keywords :
data analysis; fuzzy set theory; optimisation; pattern clustering; uncertainty handling; Cartesian product; L1 metric; L1-based fuzzy c-means; cluster center; data unit; fuzzy cluster analysis; fuzzy data clustering; fuzzy numbers; fuzzy set membership; fuzzy uncertainties; maximum distance; minimum distance; optimization procedure; uncertain data; Clustering algorithms; Data engineering; Entropy; Euclidean distance; Fuzzy systems; Knowledge engineering; Optimization methods; Systems engineering and theory; Uncertainty;
Conference_Titel :
IFSA World Congress and 20th NAFIPS International Conference, 2001. Joint 9th
Conference_Location :
Vancouver, BC
Print_ISBN :
0-7803-7078-3
DOI :
10.1109/NAFIPS.2001.943617