Parsimoniously Fitting Large Multivariate Random Effects in glmmTMB
Methodology
2024-11-08 v1
Abstract
Multivariate random effects with unstructured variance-covariance matrices of large dimensions, , can be a major challenge to estimate. In this paper, we introduce a new implementation of a reduced-rank approach to fit large dimensional multivariate random effects by writing them as a linear combination of latent variables. By adding reduced-rank functionality to the package glmmTMB, we enhance the mixed models available to include random effects of dimensions that were previously not possible. We apply the reduced-rank random effect to two examples, estimating a generalized latent variable model for multivariate abundance data and a random-slopes model.
Cite
@article{arxiv.2411.04411,
title = {Parsimoniously Fitting Large Multivariate Random Effects in glmmTMB},
author = {Maeve McGillycuddy and Gordana Popovic and Benjamin M. Bolker and David I. Warton},
journal= {arXiv preprint arXiv:2411.04411},
year = {2024}
}