PLACE: 1114 Gilman
SPEAKER: Jens Eickhoff, Department of Biostatistics & Medical Informatics, University of Wisconsin, Madison
TITLE: Generalized
linear latent variable modeling analysis for multi-group studies
ABSTRACT:
Latent variable modeling is commonly used in the behavioral, medical and social sciences. The models used in such analysis relate all observed variables to latent common factors. In many applications, the observed variables are in polytomous form. The existing procedures for models with polytomous outcomes can be considered lacking in several aspects, especially for multi-sample situations.
We incorporate a new generalized linear latent variable modeling
approach for developing statistically sound procedures that furnish meaningful
interpretation and can incorporate many types of outcome variables. In
the special case of polytomous outcomes, we also propose a model that incorporates
response errors. A rather simple model parameterization used in our approach
is appropriate for multi-sample analysis and leads to practically useful
inference procedures. A Monte Carlo EM algorithmis developed for computing
the full maximum likelihood estimates. Simulation studies are presented
to validate the benefits of the new approach and to compare its performance
to other methods.
COFFEE: 2:40 p.m., 104 Snedecor Hall