We propose a method for selecting variables in latent class analysis, which is the most common model-based clustering method for discrete data. The method assesses a variable’s usefulness for clustering by comparing two models, given the clustering variables already selected. In one model the variable contributes information about cluster allocation beyond that contained in the already selected variables, and in the other model it does not. A headlong search algorithm is used to explore the model space and select clustering variables. In simulated datasets we found that the method selected the correct clustering variables, and also led to improvements in classification performance and in accuracy of the choice of the number of classes. In t...
Summary. Variable selection in high-dimensional clustering analysis is an important yet challenging ...
Latent tree analysis seeks to model the correlations amonga set of random variables using a tree of ...
Latent class (LC) analysis is becoming one of the standard data analysis tools in social, biomedical...
We propose a method for selecting variables in latent class analysis, which is the most common model...
We consider the problem of variable or feature selection for model-based clustering. The problem of ...
Machine learning techniques are becoming indispensable tools for extracting useful information. Amon...
Latent class analysis is used to perform model based clustering for multivariate categorical respons...
Variable selection for cluster analysis is a difficult problem. The difficulty originates not only f...
We compare two major approaches to variable selection in clustering: model selection and regularizat...
In this paper we present a model based clustering approach which contextually performs dimension red...
The currently available variable selection procedures in model-based clustering assume that the irre...
Thesis (Ph.D.)--University of Rochester. School of Medicine & Dentistry. Dept. of Biostatistics and ...
This paper is concerned with model-based clustering of discrete data. Latent class models (LCMs) are...
International audienceSeveral methods for variable selection have been proposed in model-based clust...
Model-based clustering methods for continuous data are well established and commonly used in a wide ...
Summary. Variable selection in high-dimensional clustering analysis is an important yet challenging ...
Latent tree analysis seeks to model the correlations amonga set of random variables using a tree of ...
Latent class (LC) analysis is becoming one of the standard data analysis tools in social, biomedical...
We propose a method for selecting variables in latent class analysis, which is the most common model...
We consider the problem of variable or feature selection for model-based clustering. The problem of ...
Machine learning techniques are becoming indispensable tools for extracting useful information. Amon...
Latent class analysis is used to perform model based clustering for multivariate categorical respons...
Variable selection for cluster analysis is a difficult problem. The difficulty originates not only f...
We compare two major approaches to variable selection in clustering: model selection and regularizat...
In this paper we present a model based clustering approach which contextually performs dimension red...
The currently available variable selection procedures in model-based clustering assume that the irre...
Thesis (Ph.D.)--University of Rochester. School of Medicine & Dentistry. Dept. of Biostatistics and ...
This paper is concerned with model-based clustering of discrete data. Latent class models (LCMs) are...
International audienceSeveral methods for variable selection have been proposed in model-based clust...
Model-based clustering methods for continuous data are well established and commonly used in a wide ...
Summary. Variable selection in high-dimensional clustering analysis is an important yet challenging ...
Latent tree analysis seeks to model the correlations amonga set of random variables using a tree of ...
Latent class (LC) analysis is becoming one of the standard data analysis tools in social, biomedical...