In this paper we face the problem of clustering mixedmode data by assuming that the observed binary variables aregenerated from latent continuous variables. We perform a principalcomponents analysis on the matrix of tetrachoric correlations and wethen estimate the scores of each latent variable and construct adata matrix with continuous variables to be used in fully Guassianmixture models or in the k-means cluster analysis. The calculationof the expected a posteriori (EAP) estimates may proceed by simplyconsidering a limited number of quadrature points. Results on asimulation study and on a real data set are reported
Mixture model clustering proceeds by fitting a finite mixture of multivariate distributions to data,...
International audienceClustering task of mixed data is a challenging problem. In a probabilistic fra...
We consider model-based clustering methods for continuous, correlated data that account for external...
In this paper we face the problem of clustering mixedmode data by assuming that the observed binary ...
In this paper we face the problem of clustering mixedmode data by assuming that the observed binary ...
In this paper we face the problem of clustering mixedmode data by assuming that the observed binary ...
In the modern world, data have become increasingly more complex and often contain different types of...
For clustering objects, we often collect not only continuous variables, but binary attributes as wel...
For clustering objects, we often collect not only continuous variables, but binary attributes as wel...
In the modern world, data have become increasingly more complex and often contain different types of...
A mixture model of Gaussian copulas is presented to cluster mixed data (different kinds of variables...
Clustering mixed data presents numerous challenges inherent to the very heterogeneous nature of the ...
Clustering mixed data presents numerous challenges inherent to the very heterogeneous nature of the ...
Mixed data refers to a mixture of continuous and categorical variables. The clustering problem with ...
Mixture model clustering proceeds by fitting a finite mixture of multivariate distributions to data,...
Mixture model clustering proceeds by fitting a finite mixture of multivariate distributions to data,...
International audienceClustering task of mixed data is a challenging problem. In a probabilistic fra...
We consider model-based clustering methods for continuous, correlated data that account for external...
In this paper we face the problem of clustering mixedmode data by assuming that the observed binary ...
In this paper we face the problem of clustering mixedmode data by assuming that the observed binary ...
In this paper we face the problem of clustering mixedmode data by assuming that the observed binary ...
In the modern world, data have become increasingly more complex and often contain different types of...
For clustering objects, we often collect not only continuous variables, but binary attributes as wel...
For clustering objects, we often collect not only continuous variables, but binary attributes as wel...
In the modern world, data have become increasingly more complex and often contain different types of...
A mixture model of Gaussian copulas is presented to cluster mixed data (different kinds of variables...
Clustering mixed data presents numerous challenges inherent to the very heterogeneous nature of the ...
Clustering mixed data presents numerous challenges inherent to the very heterogeneous nature of the ...
Mixed data refers to a mixture of continuous and categorical variables. The clustering problem with ...
Mixture model clustering proceeds by fitting a finite mixture of multivariate distributions to data,...
Mixture model clustering proceeds by fitting a finite mixture of multivariate distributions to data,...
International audienceClustering task of mixed data is a challenging problem. In a probabilistic fra...
We consider model-based clustering methods for continuous, correlated data that account for external...