Two extensions to objective function-based fuzzy clustering are proposed. First, the (point) prototypes are extended to hypervolumes, whose size can be fixed or can be determined automatically from the data being clustered. It is shown that clustering with hypervolume prototypes can be formulated as the minimization of an objective function. Second, a heuristic cluster merging step is introduced where the similarity among the clusters is assessed during optimization. Starting with an overestimation of the number of clusters in the data, similar clusters are merged in order to obtain a suitable partitioning. An adaptive threshold for merging is proposed. The extensions proposed are applied to Gustafson-Kessel and fuzzy c-means algorithms, an...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...
Two extensions to objective function-based fuzzy clustering are proposed. First, the (point) prototy...
Two extensions to objective function-based fuzzy clustering are proposed. First, the (point) prototy...
Two extensions to the objective function-based fuzzy clustering are proposed. First, the (point) pr...
Two extensions to the objective function-based fuzzyclustering are proposed. First, the (point) prot...
Two extensions to the objective function-based fuzzyclustering are proposed. First, the (point) prot...
textabstractFuzzy clustering is a widely applied method for obtaining fuzzy models from data. It has...
Fuzzy clustering is a widely applied method for obtaining fuzzy models from data. It has been applie...
This paper discusses new approaches in objective function based fuzzy clustering. Some well-known ap...
Fuzzy clustering is a widely applied method for obtaining fuzzy models from data. It has been applie...
Fuzzy clustering algorithms are widely used in many fields, more and more research results have been...
In this paper, a similarity-driven cluster merging method is proposed for unsuper-vised fuzzy cluste...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...
Two extensions to objective function-based fuzzy clustering are proposed. First, the (point) prototy...
Two extensions to objective function-based fuzzy clustering are proposed. First, the (point) prototy...
Two extensions to the objective function-based fuzzy clustering are proposed. First, the (point) pr...
Two extensions to the objective function-based fuzzyclustering are proposed. First, the (point) prot...
Two extensions to the objective function-based fuzzyclustering are proposed. First, the (point) prot...
textabstractFuzzy clustering is a widely applied method for obtaining fuzzy models from data. It has...
Fuzzy clustering is a widely applied method for obtaining fuzzy models from data. It has been applie...
This paper discusses new approaches in objective function based fuzzy clustering. Some well-known ap...
Fuzzy clustering is a widely applied method for obtaining fuzzy models from data. It has been applie...
Fuzzy clustering algorithms are widely used in many fields, more and more research results have been...
In this paper, a similarity-driven cluster merging method is proposed for unsuper-vised fuzzy cluste...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...