AbstractThis paper presents a fuzzy clustering based correlation which measures the similarity of the ordinary correlation of objects and the correlation of the classification structures of the objects. This correlation is derived from self- organized dissimilarity which measures dissimilarity of a pair of objects and classification structures of the objects. It is known that this dissimilarity performs better for noisy data. In this paper, we first describe the performance of the self-organized dissimilarity in the framework of the clustering model. Next, we show how to obtain the fuzzy clustering based correlation from the self-organized dissimilarity. Finally, we provide a numerical example of the use of fuzzy clustering based correlatio...
Fuzzy c-varieties (FCV) is one of the clustering algorithms in which the prototypes are multi-dimens...
In this paper, we propose a new correlation coefficient between intuitionistic fuzzy sets. We then u...
Clustering aims to partition a data set into homogenous groups which gather similar objects. Object ...
AbstractThis paper presents a fuzzy clustering based correlation which measures the similarity of th...
We propose a new correlation based on a fuzzy clustering result and a new principal component anal-y...
Clustering refers to the process of unsupervised partitioning of a data set based on a dissimilarity...
The purpose of this paper is to improve the performance of the kernel fuzzy clustering model by intr...
The detection of correlations between different features in a set of feature vectors is a very impor...
The curse of dimensionality, which refers to both the combinatorial explosion in dimensions and the ...
The detection of correlations between different features in a set of feature vectors is a very impor...
There are numerous binary similarity measures. Different binary similarity measures estimate differe...
One of the most interesting and promising approaches to the analysis of multivariate phenomena and p...
In this paper we study the fuzzy c-mean clustering algorithm combined with principal components meth...
The detection of correlations between different fea-tures in high dimensional data sets is a very im...
AbstractThis paper presents a visualization of a result of fuzzy clustering. The feature of fuzzy cl...
Fuzzy c-varieties (FCV) is one of the clustering algorithms in which the prototypes are multi-dimens...
In this paper, we propose a new correlation coefficient between intuitionistic fuzzy sets. We then u...
Clustering aims to partition a data set into homogenous groups which gather similar objects. Object ...
AbstractThis paper presents a fuzzy clustering based correlation which measures the similarity of th...
We propose a new correlation based on a fuzzy clustering result and a new principal component anal-y...
Clustering refers to the process of unsupervised partitioning of a data set based on a dissimilarity...
The purpose of this paper is to improve the performance of the kernel fuzzy clustering model by intr...
The detection of correlations between different features in a set of feature vectors is a very impor...
The curse of dimensionality, which refers to both the combinatorial explosion in dimensions and the ...
The detection of correlations between different features in a set of feature vectors is a very impor...
There are numerous binary similarity measures. Different binary similarity measures estimate differe...
One of the most interesting and promising approaches to the analysis of multivariate phenomena and p...
In this paper we study the fuzzy c-mean clustering algorithm combined with principal components meth...
The detection of correlations between different fea-tures in high dimensional data sets is a very im...
AbstractThis paper presents a visualization of a result of fuzzy clustering. The feature of fuzzy cl...
Fuzzy c-varieties (FCV) is one of the clustering algorithms in which the prototypes are multi-dimens...
In this paper, we propose a new correlation coefficient between intuitionistic fuzzy sets. We then u...
Clustering aims to partition a data set into homogenous groups which gather similar objects. Object ...