Latent class models are used for cluster analysis of categorical data. Underlying such a model is the assumption that the observed variables are mutually independent given the class variable. A serious problem with the use of latent class models, known as local dependence, is that this assumption is often untrue. In this paper we propose hierarchical latent class models as a framework where the local dependence problem can be addressed in a principled manner. We develop a search-based algorithm for learning hierarchical latent class models from data. The algorithm is evaluated using both synthetic and real-world data. Keywords: Model-based clustering, latent class models, local dependence, Bayesian networks, latent structure discovery 1
This paper develops a new method for hierarchical clustering. Unlike other existing clustering schem...
Inferring latent structures from observations helps to model and possibly also understand underlying...
This paper develops a new method for hierarchical clustering. Unlike other existing clustering schem...
Latent class models are used for cluster analysis of categorical data. Underlying such a model is th...
Hierarchical latent class (HLC) models generalize latent class models. As models for cluster analysi...
Hierarchical latent class (HLC) models are tree-structured Bayesian networks where leaf nodes are ob...
Hierarchical latent class (HLC) models are tree-structured Bayesian networks where leaf nodes are ob...
Current methods for hierarchical clustering of data either operate on features of the data or make l...
International audienceIn model-based clustering, each cluster is modelled by a parametrised probabil...
Latent variable models for network data extract a summary of the relational structure underlying an ...
Hierarchical latent class (HLC) models are tree-structured Bayesian networks where leaf nodes are ob...
International audienceIn this paper, we introduce a two step methodology to extract a hierarchical c...
We propose a method for selecting variables in latent class analysis, which is the most common model...
Unsupervised learning plays an important role in the Knowlede exploration discovery. The basic task ...
We propose a method for selecting variables in latent class analysis, which is the most common model...
This paper develops a new method for hierarchical clustering. Unlike other existing clustering schem...
Inferring latent structures from observations helps to model and possibly also understand underlying...
This paper develops a new method for hierarchical clustering. Unlike other existing clustering schem...
Latent class models are used for cluster analysis of categorical data. Underlying such a model is th...
Hierarchical latent class (HLC) models generalize latent class models. As models for cluster analysi...
Hierarchical latent class (HLC) models are tree-structured Bayesian networks where leaf nodes are ob...
Hierarchical latent class (HLC) models are tree-structured Bayesian networks where leaf nodes are ob...
Current methods for hierarchical clustering of data either operate on features of the data or make l...
International audienceIn model-based clustering, each cluster is modelled by a parametrised probabil...
Latent variable models for network data extract a summary of the relational structure underlying an ...
Hierarchical latent class (HLC) models are tree-structured Bayesian networks where leaf nodes are ob...
International audienceIn this paper, we introduce a two step methodology to extract a hierarchical c...
We propose a method for selecting variables in latent class analysis, which is the most common model...
Unsupervised learning plays an important role in the Knowlede exploration discovery. The basic task ...
We propose a method for selecting variables in latent class analysis, which is the most common model...
This paper develops a new method for hierarchical clustering. Unlike other existing clustering schem...
Inferring latent structures from observations helps to model and possibly also understand underlying...
This paper develops a new method for hierarchical clustering. Unlike other existing clustering schem...