Tesis
Métodos de estimação em modelos de efeitos mistos não lineares de caudas pesadas
Fecha
2019-12-05Registro en:
Autor
Gomes, José Clelto Barros
Institución
Resumen
Parameter estimation in nonlinear mixed-effects models is often challenging. In this thesis,
a comparison of estimation methods for these models is proposed under a frequentist
approach. In the first study, a comparison of maximum likelihood estimates under an
exact method via Monte Carlo expectation-maximization (MCEM) and an approximate
method based on a Taylor expansion, frequently used in the literature, is provided. In
a second study, a restricted maximum likelihood estimation method is proposed, aiming
to decrease the bias for the variance components estimates, based on the integration of
the likelihood function on the fixed-effects, also in an exact likelihood context. These
estimates are compared to the maximum likelihood ones. For the latter comparison,
stochastic approximation of expectation-maximization (SAEM) algorithms are considered.
The random effects and errors are assumed to follow multivariate symmetric distributions,
namely the scale mixture of normal distributions, which include the normal, t and slash
distributions. Finally, a general nonlinear mixed-effects model is proposed, where no
linear relation is assumed in the random effects structure. In all the proposals, real data
sets and simulation studies are used to illustrate the estimates’ properties.