Testing for outliers in nonlinear longitudinal data models based on M-estimation
Authors
Huihui Sun
Abstract
In this paper we propose and analyze nonlinear mixed-effects models for longitudinal data,
obtaining robust maximum likelihood estimates for the parameters by introducing Huber\u2019s function in the
log-likelihood function. Furthermore, the test for outliers in the model based on robust estimation is
investigated through generalized Cook\u2019s distance. The obtained results are illustrated by plasma
concentrations data presented in Davidian and Giltiman, which was analyzed under the non-robust situation.