In this paper, a new level-based (hierarchical) approach to the fuzzy clustering problem for spatial data is proposed. In this approach each point of the initial set is handled as a fuzzy point of the multidimensional space. Fuzzy point conical form, fuzzy a-neighbor points, fuzzy a-joint points are defined and their properties are explored. It is known that in classical fuzzy clustering the matter of fuzziness is usually a possibility of membership of each element into different classes with different positive degrees from [0,1]. In this study, the fuzziness of clustering is evaluated as how much in detail the properties of classified elements are investigated. In this extent, a new Fuzzy Joint Points (FJP) method which is robust through n...
fuzzy performs unsupervised classification by fuzzy c-means spectral and spatial clustering into max...
Abstract: A three-stage dynamic fuzzy clustering algorithm consisting of initial partitioning, a seq...
In many practical situations data may be characterized by nonlinearly separable clusters. Classical ...
In this paper, a new level-based (hierarchical) approach to the fuzzy clustering problem for spatial...
A new hierarchical approach to the problem of clustering, called the Fuzzy Joint Point, FJP) method ...
The present article considers the fuzzy joint points (FJP) method for the problem of fuzzy clusterin...
This paper deals with a new method of fuzzy clustering. The basic concepts of the method are introdu...
The fuzzy joint points (FJP) method is one of the successful fuzzy approaches to density-based clust...
AbstractThis paper proposed a novel fuzzy clustering method on spatial data based on Delaunay Triang...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...
Classification plays an important role in many fields of life, including medical diagnosis support. ...
Methods like DBSCAN are widely used in the analysis of spatial data. These methods are based on the ...
Abstract: Some data sets contain data clusters not in all dimension, but in subspaces. Known algo-ri...
summary:An iterative fuzzy clustering method is proposed to partition a set of multivariate binary o...
The application of fuzzy cluster analysis to larger data sets can cause runtime and memory overflow ...
fuzzy performs unsupervised classification by fuzzy c-means spectral and spatial clustering into max...
Abstract: A three-stage dynamic fuzzy clustering algorithm consisting of initial partitioning, a seq...
In many practical situations data may be characterized by nonlinearly separable clusters. Classical ...
In this paper, a new level-based (hierarchical) approach to the fuzzy clustering problem for spatial...
A new hierarchical approach to the problem of clustering, called the Fuzzy Joint Point, FJP) method ...
The present article considers the fuzzy joint points (FJP) method for the problem of fuzzy clusterin...
This paper deals with a new method of fuzzy clustering. The basic concepts of the method are introdu...
The fuzzy joint points (FJP) method is one of the successful fuzzy approaches to density-based clust...
AbstractThis paper proposed a novel fuzzy clustering method on spatial data based on Delaunay Triang...
A clustering algorithm is an unsupervised method, which aims to divide data points into two groups o...
Classification plays an important role in many fields of life, including medical diagnosis support. ...
Methods like DBSCAN are widely used in the analysis of spatial data. These methods are based on the ...
Abstract: Some data sets contain data clusters not in all dimension, but in subspaces. Known algo-ri...
summary:An iterative fuzzy clustering method is proposed to partition a set of multivariate binary o...
The application of fuzzy cluster analysis to larger data sets can cause runtime and memory overflow ...
fuzzy performs unsupervised classification by fuzzy c-means spectral and spatial clustering into max...
Abstract: A three-stage dynamic fuzzy clustering algorithm consisting of initial partitioning, a seq...
In many practical situations data may be characterized by nonlinearly separable clusters. Classical ...