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Posterior Consistency in Conditional Density Estimation by Covariate Dependent Mixtures
by
Norets, Andriy
, Pelenis, Justinas
2011
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Posterior Consistency in Conditional Density Estimation by Covariate Dependent Mixtures
by
Norets, Andriy
, Pelenis, Justinas
2011
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Posterior Consistency in Conditional Density Estimation by Covariate Dependent Mixtures
Paper
Posterior Consistency in Conditional Density Estimation by Covariate Dependent Mixtures
2011
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Overview
This paper considers Bayesian nonparametric estimation of conditional densities by countable mixtures of location-scale densities with covariate dependent mixing probabilities. The mixing probabilities are modeled in two ways. First, we consider finite covariate dependent mixture models, in which the mixing probabilities are proportional to a product of a constant and a kernel and a prior on the number of mixture components is specified. Second, we consider kernel stick-breaking processes for modeling the mixing probabilities. We show that the posterior in these two models is weakly and strongly consistent for a large class of data generating processes.
Publisher
Federal Reserve Bank of St. Louis
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