Abstract
We propose a Bayesian semiparametric methodology for quantile regression modelling. In particular, working with parametric quantile regression functions, we develop Dirichlet process mixture models for the error distribution in an additive quantile regression formulation. The proposed non-parametric prior probability models allow the shape of the error density to adapt to the data and thus provide more reliable predictive inference than models based on parametric error distributions. We consider extensions to quantile regression for data sets that include censored observations. Moreover, we employ dependent Dirichlet processes to develop quantile regression models that allow the error distribution to change non-parametrically with the covariates. Posterior inference is implemented using Markov chain Monte Carlo methods. We assess and compare the performance of our models using both simulated and real data sets.
Original language | English |
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Pages (from-to) | 297-319 |
Number of pages | 23 |
Journal | Scandinavian Journal of Statistics |
Volume | 36 |
Issue number | 2 |
DOIs | |
Publication status | Published - Jun 2009 |
Externally published | Yes |
Keywords
- Censoring
- Dependent Dirichlet processes
- Dirichlet process mixture models
- Median regression
- Scale uniform mixtures
- Skewness