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Nonparametric Bayes inference for concave distribution functions
Authors:Martin B. Hansen,&   Steffen L. Lauritzen
Affiliation:Department of Mathematical Sciences, AalborgøUniversity, Denmark
Abstract:Bayesian inference for concave distribution functions is investigated. This is made by transforming a mixture of Dirichlet processes on the space of distribution functions to the space of concave distribution functions. We give a method for sampling from the posterior distribution using a Pólya urn scheme in combination with a Markov chain Monte Carlo algorithm. The methods are extended to estimation of concave distribution functions for incompletely observed data.
Keywords:Dirichlet process    Markov chain Monte Carlo    concave distribution functions    decreasing density function    order restricted inference    multiplicative censoring    Pólya urn scheme.
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