Generalized latent variable models for location, scale, and shape parameters

Cardenas Hurtado, CamiloORCID logo; Moustaki, IriniORCID logo; Chen, YunxiaoORCID logo; and Marra, Giampiero (2025) Generalized latent variable models for location, scale, and shape parameters Psychometrika. ISSN 0033-3123
Copy

We introduce a general framework for latent variable modeling, named Generalized Latent Variable Models for Location, Scale, and Shape parameters (GLVM-LSS). This framework extends the generalized linear latent variable model beyond the exponential family distributional assumption and enables the modeling of distributional parameters other than the mean (location parameter), such as scale and shape parameters, as functions of latent variables. Model parameters are estimated via maximum likelihood. We present two real-world applications on public opinion research and educational testing, and evaluate the model’s performance in terms of parameter recovery through extensive simulation studies. Our results suggest that the GLVM-LSS is a valuable tool in applications where modeling higher-order moments of the observed variables through latent variables is of substantive interest. The proposed model is implemented in the R package glvmlss, available online.

picture_as_pdf

picture_as_pdf
subject
Published Version
Available under Creative Commons: Attribution 4.0

Download

Atom BibTeX OpenURL ContextObject in Span OpenURL ContextObject Dublin Core MPEG-21 DIDL Data Cite XML EndNote HTML Citation METS MODS RIOXX2 XML Reference Manager Refer ASCII Citation
Export

Downloads