Cluster analysis (CA) aims at finding homogeneous group of individuals, where homogeneous is referred to individuals that present similar characteristics. Many CA techniques already exist, among the non-hierarchical ones the most known, thank to its simplicity and computational property, is k-means method. However, the method is unstable when the number of variables is large and when variables are correlated. This problem leads to the development of two-step methods, they perform a linear transformation of variable into a reduced number of uncorrelated factors and CA is applied on this factors. Two-steps methods minimize two different functions that can be in contrast between them and the first factorial step can in part obscure the cluster...
We present a new iterative method for probabilistic clustering of data. Given clusters, their center...
The probabilistic distance clustering method of the authors [2, 8], assumes the cluster membership p...
The cluster analysis of real-life data often encounters the challenges of noisy data or may rely hea...
Cluster analysis (CA) aims at finding homogeneous group of individuals, where homogeneous is referre...
Probabilistic Distance (PD) Clustering is a non parametric probabilistic method to find homogeneous ...
Factorial clustering methods have been developed in recent years thanks to the improving of computat...
Factor clustering methods have been developed in recent years thanks to improvements in computationa...
Factor clustering methods have been proposed in order to cluster large datasets, where large is refe...
Binary data represent a very special condition where both measures of distance and co-occurrence can...
To achieve an insightful clustering of multivariate data, we propose subspace K-means. Its central i...
Non-hierarchical clustering methods are frequently based on the idea of forming groups around 'objec...
Cluster analysis is the study of how to partition data into homogeneous subsets so that the partitio...
This chapter deals with basic tools useful in clustering and classification and present some commonl...
Abstract To achieve an insightful clustering of multivariate data, we propose subspace K-means. Its ...
Clustering partitions a dataset such that observations placed together in a group are similar but di...
We present a new iterative method for probabilistic clustering of data. Given clusters, their center...
The probabilistic distance clustering method of the authors [2, 8], assumes the cluster membership p...
The cluster analysis of real-life data often encounters the challenges of noisy data or may rely hea...
Cluster analysis (CA) aims at finding homogeneous group of individuals, where homogeneous is referre...
Probabilistic Distance (PD) Clustering is a non parametric probabilistic method to find homogeneous ...
Factorial clustering methods have been developed in recent years thanks to the improving of computat...
Factor clustering methods have been developed in recent years thanks to improvements in computationa...
Factor clustering methods have been proposed in order to cluster large datasets, where large is refe...
Binary data represent a very special condition where both measures of distance and co-occurrence can...
To achieve an insightful clustering of multivariate data, we propose subspace K-means. Its central i...
Non-hierarchical clustering methods are frequently based on the idea of forming groups around 'objec...
Cluster analysis is the study of how to partition data into homogeneous subsets so that the partitio...
This chapter deals with basic tools useful in clustering and classification and present some commonl...
Abstract To achieve an insightful clustering of multivariate data, we propose subspace K-means. Its ...
Clustering partitions a dataset such that observations placed together in a group are similar but di...
We present a new iterative method for probabilistic clustering of data. Given clusters, their center...
The probabilistic distance clustering method of the authors [2, 8], assumes the cluster membership p...
The cluster analysis of real-life data often encounters the challenges of noisy data or may rely hea...