posted on 2024-11-16, 08:04authored byDavid Ruppert, Matthew Wand, Raymond J Carroll
Semiparametric regression is a fusion between parametric regression and nonparametric regression that integrates low-rank penalized splines, mixed model and hierarchical Bayesian methodology - thus allowing more streamlined handling of longitudinal and spatial correlation. We review progress in the field over the five-year period between 2003 and 2007. We find semiparametric regression to be a vibrant field with substantial involvement and activity, continual enhancement and widespread application.
Funding
Generalised Linear Mixed Models: Theory, Methods and New Areas of Application