A novel fuzzy clustering algorithm is presented in this paper, which removes the constraints generally imposed to the cluster shape when a given model is adopted for membership functions. An on-line, sequential procedure is proposed where the cluster determination is performed by using suited membership functions based on geometrically unconstrained kernels and a point-to-shape distance evaluation. Since the performance of on-line algorithms suffers from the pattern presentation order, we also consider the problem of cluster validity aiming at proving the minimal dependence and the robustness with respect to the initialization of inner parameters in the proposed algorithm. The numerical results reported in the paper prove that the proposed ...
Clustering has become one of the most widely used tasks in analyzing the vast amount of data. In clu...
This paper deals with a new method of fuzzy clustering. The basic concepts of the method are introdu...
The application of fuzzy cluster analysis to larger data sets can cause runtime and memory overflow ...
Clustering algorithms are an integral part of both computational intelligence and pattern recognitio...
Online clustering is of significant interest for real-time data analysis. Generic offline clustering...
A new approach to fuzzy clustering is proposed in this paper. It aims to relax some constraints impo...
A new approach to fuzzy clustering is proposed in this paper. It aims to relax some constraints impo...
In this paper, a new approach is presented forthe evaluation of membership functions in fuzzy cluste...
For real-world clustering tasks, the input data is typically not easily separable due to the highly ...
Traditional fuzzy kernel clustering methods does Iterative clustering in the original data space or ...
One of the shortcomings of the existing clustering methods is their problems dealing with different ...
In this paper, a new level-based (hierarchical) approach to the fuzzy clustering problem for spatial...
Two new algorithms for fuzzy clustering are presented. Convergence of the proposed algorithms is pro...
In this paper, a new data-driven autonomous fuzzy clustering (AFC) algorithm is proposed for static ...
Two new algorithms for fuzzy clustering are presented. Convergence of the proposed algorithms is pro...
Clustering has become one of the most widely used tasks in analyzing the vast amount of data. In clu...
This paper deals with a new method of fuzzy clustering. The basic concepts of the method are introdu...
The application of fuzzy cluster analysis to larger data sets can cause runtime and memory overflow ...
Clustering algorithms are an integral part of both computational intelligence and pattern recognitio...
Online clustering is of significant interest for real-time data analysis. Generic offline clustering...
A new approach to fuzzy clustering is proposed in this paper. It aims to relax some constraints impo...
A new approach to fuzzy clustering is proposed in this paper. It aims to relax some constraints impo...
In this paper, a new approach is presented forthe evaluation of membership functions in fuzzy cluste...
For real-world clustering tasks, the input data is typically not easily separable due to the highly ...
Traditional fuzzy kernel clustering methods does Iterative clustering in the original data space or ...
One of the shortcomings of the existing clustering methods is their problems dealing with different ...
In this paper, a new level-based (hierarchical) approach to the fuzzy clustering problem for spatial...
Two new algorithms for fuzzy clustering are presented. Convergence of the proposed algorithms is pro...
In this paper, a new data-driven autonomous fuzzy clustering (AFC) algorithm is proposed for static ...
Two new algorithms for fuzzy clustering are presented. Convergence of the proposed algorithms is pro...
Clustering has become one of the most widely used tasks in analyzing the vast amount of data. In clu...
This paper deals with a new method of fuzzy clustering. The basic concepts of the method are introdu...
The application of fuzzy cluster analysis to larger data sets can cause runtime and memory overflow ...