Linear quantile mixed models

被引:213
作者
Geraci, Marco [1 ]
Bottai, Matteo [2 ]
机构
[1] UCL, Inst Child Hlth, Ctr Paediat Epidemiol & Biostat, MRC Ctr Epidemiol Child Hlth, London WC1N 1EH, England
[2] Karolinska Inst, Inst Environm Med, Biostat Unit, S-17177 Stockholm, Sweden
基金
英国医学研究理事会;
关键词
Best linear predictor; Clarke's derivative; Hierarchical models; Gaussian quadrature; LONGITUDINAL DATA; LAPLACE DISTRIBUTION; REGRESSION; INFERENCE; APPROXIMATION; BOOTSTRAP; MATRIX;
D O I
10.1007/s11222-013-9381-9
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Dependent data arise in many studies. Frequently adopted sampling designs, such as cluster, multilevel, spatial, and repeated measures, may induce this dependence, which the analysis of the data needs to take into due account. In a previous publication (Geraci and Bottai in Biostatistics 8:140-154, 2007), we proposed a conditional quantile regression model for continuous responses where subject-specific random intercepts were included to account for within-subject dependence in the context of longitudinal data analysis. The approach hinged upon the link existing between the minimization of weighted absolute deviations, typically used in quantile regression, and the maximization of a Laplace likelihood. Here, we consider an extension of those models to more complex dependence structures in the data, which are modeled by including multiple random effects in the linear conditional quantile functions. We also discuss estimation strategies to reduce the computational burden and inefficiency associated with the Monte Carlo EM algorithm we have proposed previously. In particular, the estimation of the fixed regression coefficients and of the random effects' covariance matrix is based on a combination of Gaussian quadrature approximations and non-smooth optimization algorithms. Finally, a simulation study and a number of applications of our models are presented.
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页码:461 / 479
页数:19
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