A unified approach to estimation of nonlinear mixed effects and Berkson measurement error models |
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Authors: | Liqun Wang |
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Affiliation: | Department of Statistics The University of Manitoba Winnipeg, Manitoba, Canada R3T 2N2 |
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Abstract: | Mixed effects models and Berkson measurement error models are widely used. They share features which the author uses to develop a unified estimation framework. He deals with models in which the random effects (or measurement errors) have a general parametric distribution, whereas the random regression coefficients (or unobserved predictor variables) and error terms have nonparametric distributions. He proposes a second-order least squares estimator and a simulation-based estimator based on the first two moments of the conditional response variable given the observed covariates. He shows that both estimators are consistent and asymptotically normally distributed under fairly general conditions. The author also reports Monte Carlo simulation studies showing that the proposed estimators perform satisfactorily for relatively small sample sizes. Compared to the likelihood approach, the proposed methods are computationally feasible and do not rely on the normality assumption for random effects or other variables in the model. |
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Keywords: | Fixed effects least squares longitudinal data measurement error minimum distance estimator random effect repeated measurements simulation-based estimator |
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