Nonlinear mixed effects models for repeated measures data

MJ Lindstrom, DM Bates - Biometrics, 1990 - JSTOR
MJ Lindstrom, DM Bates
Biometrics, 1990JSTOR
We propose a general, nonlinear mixed effects model for repeated measures data and
define estimators for its parameters. The proposed estimators are a natural combination of
least squares estimators for nonlinear fixed effects models and maximum likelihood (or
restricted maximum likelihood) estimators for linear mixed effects models. We implement
Newton-Raphson estimation using previously developed computational methods for
nonlinear fixed effects models and for linear mixed effects models. Two examples are …
We propose a general, nonlinear mixed effects model for repeated measures data and define estimators for its parameters. The proposed estimators are a natural combination of least squares estimators for nonlinear fixed effects models and maximum likelihood (or restricted maximum likelihood) estimators for linear mixed effects models. We implement Newton-Raphson estimation using previously developed computational methods for nonlinear fixed effects models and for linear mixed effects models. Two examples are presented and the connections between this work and recent work on generalized linear mixed effects models are discussed.
JSTOR