Title of article :
Bayesian modeling of joint and conditional distributions
Author/Authors :
Norets، نويسنده , , Andriy and Pelenis، نويسنده , , Justinas and Chin، نويسنده ,
Pages :
15
From page :
332
To page :
346
Abstract :
In this paper, we study a Bayesian approach to flexible modeling of conditional distributions. The approach uses a flexible model for the joint distribution of the dependent and independent variables and then extracts the conditional distributions of interest from the estimated joint distribution. We use a finite mixture of multivariate normals (FMMN) to estimate the joint distribution. The conditional distributions can then be assessed analytically or through simulations. The discrete variables are handled through the use of latent variables. The estimation procedure employs an MCMC algorithm. We provide a characterization of the Kullback–Leibler closure of FMMN and show that the joint and conditional predictive densities implied by the FMMN model are consistent estimators for a large class of data generating processes with continuous and discrete observables. The method can be used as a robust regression model with discrete and continuous dependent and independent variables and as a Bayesian alternative to semi- and non-parametric models such as quantile and kernel regression. In experiments, the method compares favorably with classical nonparametric and alternative Bayesian methods.
Keywords :
Mixture of normal distributions , Consistency , Bayesian conditional density estimation , Heteroscedasticity and non-linearity robust inference
Journal title :
Astroparticle Physics
Record number :
2041587
Link To Document :
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