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Bayesian Lasso-mixed quantile regression
Authors
Alhamzawi R.
Andrews D. F.
+6 more
Bradic J.
Chhikara R. S.
Keming Yu
Rahim Alhamzawi
Reed C.
Wu Y.
Publication date
12 October 2012
Publisher
'Informa UK Limited'
Doi
Abstract
In this paper, we discuss the regularization in linear-mixed quantile regression. A hierarchical Bayesian model is used to shrink the fixed and random effects towards the common population values by introducing an l1 penalty in the mixed quantile regression check function. A Gibbs sampler is developed to simulate the parameters from the posterior distributions. Through simulation studies and analysis of an age-related macular degeneration (ARMD) data, we assess the performance of the proposed method. The simulation studies and the ARMD data analysis indicate that the proposed method performs well in comparison with the other approaches. © 2012 Taylor & Francis
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Brunel University Research Archive
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oai:bura.brunel.ac.uk:2438/125...
Last time updated on 27/07/2016
Crossref
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info:doi/10.1080%2F00949655.20...
Last time updated on 11/12/2019