Search
- Browse Authors in the Johns Hopkins University, Dept. of Biostatistics Working Papers
Notification
Most popular papers
COBRA Notification
Most Popular Papers
Institutions: Join COBRA
About COBRA
- Multilevel Latent Class Models with Dirichlet Mixing Distribution
-
-
Download the Paper
Forward to a colleague
- Abstract:
- Latent class analysis (LCA) and latent class regression
(LCR) are widely used for modeling multivariate categorical outcomes
in social sciences and biomedical studies. Standard analyses assume
data of different respondents to be mutually independent, excluding
application of the methods to familial and other designs in which
participants are clustered. In this paper, we develop multilevel
latent class model, in which subpopulation mixing probabilities are
treated as random effects that vary among clusters according to a
common Dirichlet distribution. We apply the Expectation-Maximization
(EM) algorithm for model fitting by maximum likelihood (ML). This
approach works well, but is computationally intensive when either
the number of classes or the cluster size is large. We propose a
maximum pairwise likelihood (MPL) approach via a modified EM
algorithm for this case. We also show that a simple latent class
analysis, combined with robust standard errors, provides another
consistent, robust, but less efficient inferential procedure.
Simulation studies suggest that the three methods work well in
finite samples, and that the MPL estimates often enjoy comparable
precision as the ML estimates. We apply our methods to the analysis
of comorbid symptoms in the Obsessive Compulsive Disorder study. Our
models' random effects structure has more straightforward
interpretation than those of competing methods, thus should usefully
augment tools available for latent class analysis of multilevel
data.
- Subject Area:
- Categorical Data Analysis, General Biostatistics, Statistical Models
- Suggested Citation:
- Chongzhi Di and Karen Bandeen-Roche,
"Multilevel Latent Class Models with Dirichlet Mixing Distribution"
(October 2008).
Johns Hopkins University, Dept. of Biostatistics Working Papers.
Working Paper 174.
http://www.bepress.com/jhubiostat/paper174