Existing methods can perform likelihood-based clustering on a multivariate data matrix of ordinal data, using finite mixtures to cluster the rows (observations) of the matrix. These models can incorporate the main effects of individual rows and columns, as well as cluster effects, to model the matrix of responses. However, many real-world applications also include available covariates, which provide insights into the main characteristics of the clusters and determine clustering structures based on both the individuals’ similar patterns of responses and the effects of the covariates on the individuals' responses. In our research we have extended the mixture-based models to include covariates and test what effect this has on the resulting clu...
International audienceWe design the first univariate probability distribution for ordinal data which...
In this paper, we consider the use of mixtures of linear mixed models to cluster data which may be c...
The literature on cluster analysis has a long and rich history in several different fields. In this ...
Many researchers treat ordinal variables as continuous or nominal. Losing ordering information makes...
One of the key questions in the use of mixture models concerns the choice of the number of component...
Many of the methods which deal with the reduction of dimensionality in matrices of data are based on...
In social sciences, studies are often based on questionnaires asking participants to express ordered...
Model based approaches to cluster continuous and cross-sectional data are abundant and well establis...
A finite mixture model to simultaneously cluster the rows and columns of a two-mode ordinal data mat...
In this paper, we provide an overview on the underlying response variable (URV) model-based approach...
Many of the methods which deal with clustering in matrices of data are based on mathematical techniq...
A mixture model for ordinal data modelling (denoted CUB) has been recently proposed in literature. S...
IFCS 2011 Symposium of the International Federation of Classification Societies (IFCS), August 30, 2...
The work in this paper introduces finite mixture models that can be used to simultaneously cluster t...
International audienceA model-based co-clustering algorithm for ordinal data is presented. This algo...
International audienceWe design the first univariate probability distribution for ordinal data which...
In this paper, we consider the use of mixtures of linear mixed models to cluster data which may be c...
The literature on cluster analysis has a long and rich history in several different fields. In this ...
Many researchers treat ordinal variables as continuous or nominal. Losing ordering information makes...
One of the key questions in the use of mixture models concerns the choice of the number of component...
Many of the methods which deal with the reduction of dimensionality in matrices of data are based on...
In social sciences, studies are often based on questionnaires asking participants to express ordered...
Model based approaches to cluster continuous and cross-sectional data are abundant and well establis...
A finite mixture model to simultaneously cluster the rows and columns of a two-mode ordinal data mat...
In this paper, we provide an overview on the underlying response variable (URV) model-based approach...
Many of the methods which deal with clustering in matrices of data are based on mathematical techniq...
A mixture model for ordinal data modelling (denoted CUB) has been recently proposed in literature. S...
IFCS 2011 Symposium of the International Federation of Classification Societies (IFCS), August 30, 2...
The work in this paper introduces finite mixture models that can be used to simultaneously cluster t...
International audienceA model-based co-clustering algorithm for ordinal data is presented. This algo...
International audienceWe design the first univariate probability distribution for ordinal data which...
In this paper, we consider the use of mixtures of linear mixed models to cluster data which may be c...
The literature on cluster analysis has a long and rich history in several different fields. In this ...