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Econometrics / Statistical models / Bayesian statistics / Quantile regression / Joint probability distribution / Gibbs sampling / Mixture model / Normal distribution / Conditional probability distribution / Statistics / Probability and statistics / Regression analysis
Date: 2013-10-16 15:09:59
Econometrics
Statistical models
Bayesian statistics
Quantile regression
Joint probability distribution
Gibbs sampling
Mixture model
Normal distribution
Conditional probability distribution
Statistics
Probability and statistics
Regression analysis

Bayesian modeling of joint and conditional distributions by mixtures

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