Existing models for cluster analysis typically consist of a number of attributes that describe the objects to be partitioned and one single latent variable that represents the clusters to be identified. When one analyzes data using such a model, one is looking for one way to cluster data that is jointly defined by all the attributes. In other words, one performs unidimensional clustering. This is not always appropriate. For complex data with many attributes, it is more reasonable to consider multidimensional clustering, i.e., to partition data along multiple dimensions. In this paper, we present a method for performing multidimensional clustering on categorical data and show its superiority over unidimensional clustering. © 2011 Elsevier B....
Cluster analysis can not only cluster observations/cases into several groups but also cluster variab...
Clustering is an active research topic in data mining and different methods have been proposed in th...
This paper is concerned with model-based clustering of discrete data. Latent class models (LCMs) are...
AbstractExisting models for cluster analysis typically consist of a number of attributes that descri...
AbstractExisting models for cluster analysis typically consist of a number of attributes that descri...
Multidimensional data sets often include categorical information. When most columns have categorical...
Early research work on clustering usually assumed that there was one true clustering of data. Howeve...
In clustering, one may be interested in the classification of similar objects into groups, and one m...
Multidimensional data sets often include categorical information. When most columns have categorical...
There exist several methods for clustering high-dimensional data. One popular approach is to use a t...
Abstract:- Clustering constitutes an important task inside the fields of Pattern Recognition and Dat...
There exist several methods for clustering high-dimensional data. One popular approach is to use a t...
International audienceIn model based clustering, it is often supposed that only one clustering laten...
The data clustering, an unsupervised pattern recognition process is the task of assigning a set of o...
We describe a novel approach for clustering collections of sets, and its application to the analysis...
Cluster analysis can not only cluster observations/cases into several groups but also cluster variab...
Clustering is an active research topic in data mining and different methods have been proposed in th...
This paper is concerned with model-based clustering of discrete data. Latent class models (LCMs) are...
AbstractExisting models for cluster analysis typically consist of a number of attributes that descri...
AbstractExisting models for cluster analysis typically consist of a number of attributes that descri...
Multidimensional data sets often include categorical information. When most columns have categorical...
Early research work on clustering usually assumed that there was one true clustering of data. Howeve...
In clustering, one may be interested in the classification of similar objects into groups, and one m...
Multidimensional data sets often include categorical information. When most columns have categorical...
There exist several methods for clustering high-dimensional data. One popular approach is to use a t...
Abstract:- Clustering constitutes an important task inside the fields of Pattern Recognition and Dat...
There exist several methods for clustering high-dimensional data. One popular approach is to use a t...
International audienceIn model based clustering, it is often supposed that only one clustering laten...
The data clustering, an unsupervised pattern recognition process is the task of assigning a set of o...
We describe a novel approach for clustering collections of sets, and its application to the analysis...
Cluster analysis can not only cluster observations/cases into several groups but also cluster variab...
Clustering is an active research topic in data mining and different methods have been proposed in th...
This paper is concerned with model-based clustering of discrete data. Latent class models (LCMs) are...