Title of article
Additive cubic spline regression with Dirichlet process mixture errors
Author/Authors
Chib، نويسنده , , Siddhartha and Greenberg، نويسنده , , Edward، نويسنده ,
Issue Information
دوفصلنامه با شماره پیاپی سال 2010
Pages
15
From page
322
To page
336
Abstract
The goal of this article is to develop a flexible Bayesian analysis of regression models for continuous and categorical outcomes. In the models we study, covariate (or regression) effects are modeled additively by cubic splines, and the error distribution (that of the latent outcomes in the case of categorical data) is modeled as a Dirichlet process mixture. We employ a relatively unexplored but attractive basis in which the spline coefficients are the unknown function ordinates at the knots. We exploit this feature to develop a proper prior distribution on the coefficients that involves the first and second differences of the ordinates, quantities about which one may have prior knowledge. We also discuss the problem of comparing models with different numbers of knots or different error distributions through marginal likelihoods and Bayes factors which are computed within the framework of Chib (1995) as extended to DPM models by Basu and Chib (2003). The techniques are illustrated with simulated and real data.
Keywords
ordinal data , Additive regression , Non-parametric regression , Cubic spline , Dirichlet process , marginal likelihood , Bayes factors , Metropolis–Hastings , Dirichlet process mixture , Markov chain Monte Carlo , model comparison
Journal title
Journal of Econometrics
Serial Year
2010
Journal title
Journal of Econometrics
Record number
1559909
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