Font Size:
Capturing correlated clusters using mixtures of latent class models
Last modified: 2023-07-07
Abstract
Latent class models rely on the conditional
independence assumption, i.e., it is assumed that the categorical
variables are independent given the cluster memberships.
Within the Bayesian framework, we propose a suitable specification of
priors for the latent class model to identify the clusters in
multivariate categorical data where the independence assumption is not
fulfilled. Each cluster distribution is approximated by a latent
class model, leading overall to a mixture of latent class models.
The Bayesian approach allows to identify the clusters and fit their
cluster distributions using a one-step procedure. We provide suitable estimation and inference methods for the
mixture of latent class models and illustrate the performance of this
approach on artificial and real data.
independence assumption, i.e., it is assumed that the categorical
variables are independent given the cluster memberships.
Within the Bayesian framework, we propose a suitable specification of
priors for the latent class model to identify the clusters in
multivariate categorical data where the independence assumption is not
fulfilled. Each cluster distribution is approximated by a latent
class model, leading overall to a mixture of latent class models.
The Bayesian approach allows to identify the clusters and fit their
cluster distributions using a one-step procedure. We provide suitable estimation and inference methods for the
mixture of latent class models and illustrate the performance of this
approach on artificial and real data.