Traditional model-based clustering methods assume that data instances can be grouped in a single “best” way. This is often untrue for complex data, where several meaningful sets of clusters may exist, each of them associated to a unique subset of data attributes. Current literature has approached this problem with models that consider disjoint subsets of attributes to define distinct clustering solutions. Each solution being represented by a cluster variable. However, restricting attributes to a single cluster variable diminishes the expressiveness and quality of these models. For this reason, we propose a novel kind of models that allows cluster variables to have overlapping subsets of attributes between them. In order to learn these model...
Variable selection is an important problem for cluster analysis of high-dimensional data. It is also...
A large class of clustering problems can be formulated as an optimizational prob-lem in which the be...
Cluster analysis seeks to identify homogeneous subgroups of cases in a population. This article prov...
Traditional model-based clustering methods assume that data instances can be grouped in a single “be...
This paper is concerned with model-based clustering of discrete data. Latent class models (LCMs) are...
A new procedure is proposed for clustering attribute value data. When used in conjunction with conve...
We consider the problem of variable or feature selection for model-based clustering. The problem of ...
This paper examines the problem of clustering a sequence of objects that cannot be described with a ...
Variable selection for cluster analysis is a difficult problem. The difficulty originates not only f...
Existing models for cluster analysis typically consist of a number of attributes that describe the o...
AbstractExisting models for cluster analysis typically consist of a number of attributes that descri...
While the vast majority of clustering algorithms are partitional, many real world datasets have inhe...
The paper deals with a model-theoretic approach to clustering. The approach can be used to generate ...
A large class of clustering problems can be formulated as an optimizational problem in which the bes...
textAnalysis of large collections of data has become inescapable in many areas of scientific and com...
Variable selection is an important problem for cluster analysis of high-dimensional data. It is also...
A large class of clustering problems can be formulated as an optimizational prob-lem in which the be...
Cluster analysis seeks to identify homogeneous subgroups of cases in a population. This article prov...
Traditional model-based clustering methods assume that data instances can be grouped in a single “be...
This paper is concerned with model-based clustering of discrete data. Latent class models (LCMs) are...
A new procedure is proposed for clustering attribute value data. When used in conjunction with conve...
We consider the problem of variable or feature selection for model-based clustering. The problem of ...
This paper examines the problem of clustering a sequence of objects that cannot be described with a ...
Variable selection for cluster analysis is a difficult problem. The difficulty originates not only f...
Existing models for cluster analysis typically consist of a number of attributes that describe the o...
AbstractExisting models for cluster analysis typically consist of a number of attributes that descri...
While the vast majority of clustering algorithms are partitional, many real world datasets have inhe...
The paper deals with a model-theoretic approach to clustering. The approach can be used to generate ...
A large class of clustering problems can be formulated as an optimizational problem in which the bes...
textAnalysis of large collections of data has become inescapable in many areas of scientific and com...
Variable selection is an important problem for cluster analysis of high-dimensional data. It is also...
A large class of clustering problems can be formulated as an optimizational prob-lem in which the be...
Cluster analysis seeks to identify homogeneous subgroups of cases in a population. This article prov...