posted on 2024-11-16, 08:05authored byG Kauermann, John Ormerod, Matthew Wand
We devise a classification algorithm based on generalized linear mixed model (GLMM) technology. The algorithm incorporates spline smoothing, additive model-type structures and model selection. For reasons of speed we employ the Laplace approximation, rather than Monte Carlo methods. Tests on real and simulated data show the algorithm to have good classification performance. Moreover, the resulting classifiers are generally interpretable and parsimonious.
Funding
Generalised Linear Mixed Models: Theory, Methods and New Areas of Application
Kauermann, G., Ormerod, J. & Wand, M. (2010). Parsimonious classification via generalized linear mixed models. Journal of Classification, 27 (1), 89-110.