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Journal ArticleDOI

A Fuzzy Relative of the ISODATA Process and Its Use in Detecting Compact Well-Separated Clusters

J. C. Dunn
- Vol. 3, Iss: 3, pp 32-57
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TLDR
Two fuzzy versions of the k-means optimal, least squared error partitioning problem are formulated for finite subsets X of a general inner product space; in both cases, the extremizing solutions are shown to be fixed points of a certain operator T on the class of fuzzy, k-partitions of X, and simple iteration of T provides an algorithm which has the descent property relative to the least squarederror criterion function.
Abstract
Two fuzzy versions of the k-means optimal, least squared error partitioning problem are formulated for finite subsets X of a general inner product space. In both cases, the extremizing solutions are shown to be fixed points of a certain operator T on the class of fuzzy, k-partitions of X, and simple iteration of T provides an algorithm which has the descent property relative to the least squared error criterion function. In the first case, the range of T consists largely of ordinary (i.e. non-fuzzy) partitions of X and the associated iteration scheme is essentially the well known ISODATA process of Ball and Hall. However, in the second case, the range of T consists mainly of fuzzy partitions and the associated algorithm is new; when X consists of k compact well separated (CWS) clusters, Xi , this algorithm generates a limiting partition with membership functions which closely approximate the characteristic functions of the clusters Xi . However, when X is not the union of k CWS clusters, the limi...

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Citations
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Journal ArticleDOI

Cluster Prototypes and Fuzzy Memberships Jointly Leveraged Cross-Domain Maximum Entropy Clustering

TL;DR: The specific cluster prototypes and fuzzy memberships jointly leveraged CPM-JL-CDMEC features high-clustering effectiveness and robustness even in some complex data situations, and the reliability of FM-CDDM has been demonstrated to be close to well-established external criteria.
Journal Article

A Comparative Study of Fuzzy C-Means Algorithm and Entropy-Based Fuzzy Clustering Algorithms

TL;DR: These algorithms have been compared on four data sets, such as IRIS, WINES, OLITOS and psychosis and the best set of clusters has been mapped into 2-D for visualization using a self-organizing map (SOM).

Proceedings of the 6th International Conference on Machine Learning and Data Mining in Pattern Recognition

Petra Perner
TL;DR: Data mining techniques that use metrics defined on sets of partitions of finite sets such as decision tree induction, feature selection, and data discretization are discussed.
Proceedings Article

A comparison of internal and external cluster validation indexes

TL;DR: Results obtained in this study indicate that internal indexes are more accurate in group determining in a given clustering structure.
Journal ArticleDOI

Fuzzy clustering with squared Minkowski distances

TL;DR: A new fuzzy clustering model based on a root of the squared Minkowski distance which includes squared and unsquared Euclidean distances and the L 1 -distance is presented and an algorithm is presented that is based on iterative majorization and yields a convergent series of monotone nonincreasing loss function values.