Back to Search
Start Over
A bias-adjusted estimator in quantile regression for clustered data
- Source :
- Battagliola , M L , Sørensen , H , Tolver , A & Staicu , A M 2022 , ' A bias-adjusted estimator in quantile regression for clustered data ' , Econometrics and Statistics , vol. 23 , pp. 165-186 .
- Publication Year :
- 2022
-
Abstract
- Quantile regression models with random effects are useful for studying associations between covariates and quantiles of the response distribution for clustered data. Parameter estimation is examined for a class of mixed-effects quantile regression models, with focus on settings with many but small clusters. The main contributions are the following: (i) documenting that existing methods may lead to severely biased estimators for fixed effects parameters; (ii) proposing a new two-step estimation methodology where predictions of the random effects are first computed by a pseudo likelihood approach (the LQMM method) and then used as offsets in standard quantile regression; (iii) proposing a novel bootstrap sampling procedure in order to reduce bias of the two-step estimator and compute confidence intervals. The proposed estimation and associated inference is assessed numerically through rigorous simulation studies and applied to an AIDS Clinical Trial Group (ACTG) study.
Details
- Database :
- OAIster
- Journal :
- Battagliola , M L , Sørensen , H , Tolver , A & Staicu , A M 2022 , ' A bias-adjusted estimator in quantile regression for clustered data ' , Econometrics and Statistics , vol. 23 , pp. 165-186 .
- Notes :
- application/pdf, English
- Publication Type :
- Electronic Resource
- Accession number :
- edsoai.on1340141968
- Document Type :
- Electronic Resource