We propose a new technique to perform unsupervised data classification (clustering) based on density induced metric and non-smooth optimization. Our goal is to automatically recognize multidimensional clusters of non-convex shape. We present a modification of the fuzzy c-means algorithm, which uses the data induced metric, defined with the help of Delaunay triangulation. We detail computation of the distances in such a metric using graph algorithms. To find optimal positions of cluster prototypes we employ the discrete gradient method of non-smooth optimization. The new clustering method is capable to identify non-convex overlapped d-dimensional clusters.<br /
[[abstract]]Two well known fuzzy partition clustering algorithms, FCM and FPCM are based on Euclidea...
One of the shortcomings of the existing clustering methods is their problems dealing with different ...
[[abstract]]Some of the well-known fuzzy clustering algorithms are based on Euclidean distance funct...
We propose a new data induced metric to perform un supervised data classification (clustering). Our ...
This paper discusses various extensions of the classical within-group sum of squared errors function...
This paper introduces non-Euclidean c-means clustering algorithms. These algorithms rely on weighted...
This paper proposes a novel nonparametric clustering algorithm capable of identifying shape-free clu...
Pattern recognition has become a very important field over the last decade since automation and comp...
We examine various methods for data clustering and data classification that are based on the minimiz...
The Fuzzy clustering (FC) problem is a non-convex mathematical program which usually possesses sever...
A new approach to fuzzy clustering is proposed in this paper. It aims to relax some constraints impo...
The problem of cluster analysis is formulated as a problem of nonsmooth, nonconvex optimization. An ...
A new approach to fuzzy clustering is proposed in this paper. It aims to relax some constraints impo...
Abstract — Clustering is a collection of objects which are similar between them and dissimilar to th...
ONE OF THE CRITICAL ASPECTS OF CLUSTERING ALGORITHMS IS THE CORRECT IDENTIFICATION OF THE DISSIMILAR...
[[abstract]]Two well known fuzzy partition clustering algorithms, FCM and FPCM are based on Euclidea...
One of the shortcomings of the existing clustering methods is their problems dealing with different ...
[[abstract]]Some of the well-known fuzzy clustering algorithms are based on Euclidean distance funct...
We propose a new data induced metric to perform un supervised data classification (clustering). Our ...
This paper discusses various extensions of the classical within-group sum of squared errors function...
This paper introduces non-Euclidean c-means clustering algorithms. These algorithms rely on weighted...
This paper proposes a novel nonparametric clustering algorithm capable of identifying shape-free clu...
Pattern recognition has become a very important field over the last decade since automation and comp...
We examine various methods for data clustering and data classification that are based on the minimiz...
The Fuzzy clustering (FC) problem is a non-convex mathematical program which usually possesses sever...
A new approach to fuzzy clustering is proposed in this paper. It aims to relax some constraints impo...
The problem of cluster analysis is formulated as a problem of nonsmooth, nonconvex optimization. An ...
A new approach to fuzzy clustering is proposed in this paper. It aims to relax some constraints impo...
Abstract — Clustering is a collection of objects which are similar between them and dissimilar to th...
ONE OF THE CRITICAL ASPECTS OF CLUSTERING ALGORITHMS IS THE CORRECT IDENTIFICATION OF THE DISSIMILAR...
[[abstract]]Two well known fuzzy partition clustering algorithms, FCM and FPCM are based on Euclidea...
One of the shortcomings of the existing clustering methods is their problems dealing with different ...
[[abstract]]Some of the well-known fuzzy clustering algorithms are based on Euclidean distance funct...