In this paper we propose a latent class distance association model for clustering in the predictor space of large contingency tables with a categorical response variable. The rows of such a table are characterized as profiles of a set of explanatory variables, while the columns represent a single outcome variable. In many cases such tables are sparse, with many zero entries, which makes traditional models problematic. By clustering the row profiles into a few specific classes and representing these together with the categories of the response variable in a low-dimensional Euclidean space using a distance association model, a parsimonious prediction model can be obtained. A generalized EM algorithm is proposed to estimate the model parameter...
Using a basic latent class model for the analysis of binary three-way three-mode data (i.e. raters w...
Clustering is the process of breaking down a huge dataset into smaller groups. It has been used in s...
A model-based approach is developed for clustering categorical data with no natural ordering. The pr...
Item does not contain fulltextIn this paper we propose a latent class distance association model for...
Distance association models constitute a useful tool for the analysis and graphical representation o...
International audienceThis chapter deals with mixture models for clustering categorical and mixed-ty...
For clustering multivariate categorical data, a latent class model-based approach (LCC) with local i...
Standard procedures of multivariate statistics and data mining for the analysis of multivariate data...
In clustering, one may be interested in the classification of similar objects into groups, and one m...
Model-based clustering methods for continuous data are well established and commonly used in a wide ...
This work has been partially supported by Grant RTI2018-099723-B-I00 (Ministry of Science and Innova...
Most traditional clustering methods rely on a distance function. However, the distance between categ...
International audienceIn model-based clustering, each cluster is modelled by a parametrised probabil...
Clustering techniques are often performed to reduce the dimension of very large datasets, whose dire...
This paper is concerned with model-based clustering of discrete data. Latent class models (LCMs) are...
Using a basic latent class model for the analysis of binary three-way three-mode data (i.e. raters w...
Clustering is the process of breaking down a huge dataset into smaller groups. It has been used in s...
A model-based approach is developed for clustering categorical data with no natural ordering. The pr...
Item does not contain fulltextIn this paper we propose a latent class distance association model for...
Distance association models constitute a useful tool for the analysis and graphical representation o...
International audienceThis chapter deals with mixture models for clustering categorical and mixed-ty...
For clustering multivariate categorical data, a latent class model-based approach (LCC) with local i...
Standard procedures of multivariate statistics and data mining for the analysis of multivariate data...
In clustering, one may be interested in the classification of similar objects into groups, and one m...
Model-based clustering methods for continuous data are well established and commonly used in a wide ...
This work has been partially supported by Grant RTI2018-099723-B-I00 (Ministry of Science and Innova...
Most traditional clustering methods rely on a distance function. However, the distance between categ...
International audienceIn model-based clustering, each cluster is modelled by a parametrised probabil...
Clustering techniques are often performed to reduce the dimension of very large datasets, whose dire...
This paper is concerned with model-based clustering of discrete data. Latent class models (LCMs) are...
Using a basic latent class model for the analysis of binary three-way three-mode data (i.e. raters w...
Clustering is the process of breaking down a huge dataset into smaller groups. It has been used in s...
A model-based approach is developed for clustering categorical data with no natural ordering. The pr...