We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. We combine prior distributions on each element of a list of log spline density models of different levels of regularity with a prior on the regularity levels to obtain a prior on the union of the models in the list. If the true density of the observations belongs to the model with a given regularity, then the posterior distribution concentrates near this true density at the rate corresponding to this regularity
We study convergence rates of Bayesian density estimators based on finite location-scale mixtures of...
International audienceWe derive rates of contraction of posterior distributions on non-parametric mo...
In this paper, we investigate the asymptotic properties of nonparametric Bayesian mixtures of Betas ...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We consider estimating a probability density p based on a random sample from this density by a Bayes...
We consider nonparametric Bayesian estimation of a probability density p based on a random sample of...
We consider Bayesian density estimation using a Pitman-Yor or a normalized inverse-Gaussian process ...
We consider Bayesian density estimation using a Pitman-Yor or a normalized inverse-Gaussian process ...
In the need for low assumption inferential methods in infinite-dimensional settings, Bayesian adapti...
In this work we investigate the asymptotic properties of nonparametric bayesian mixtures of Betas fo...
We derive rates of contraction of posterior distributions on nonparametric models resulting from sie...
We study the rate of convergence of posterior distributions in density estimation problems for log-d...
We study the rate of convergence of posterior distributions in density estimation problems for log-d...
We study the Bayes estimation of an infinite dimensional parameter from a Sobolev smoothness class. ...
We study convergence rates of Bayesian density estimators based on finite location-scale mixtures of...
International audienceWe derive rates of contraction of posterior distributions on non-parametric mo...
In this paper, we investigate the asymptotic properties of nonparametric Bayesian mixtures of Betas ...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We consider estimating a probability density p based on a random sample from this density by a Bayes...
We consider nonparametric Bayesian estimation of a probability density p based on a random sample of...
We consider Bayesian density estimation using a Pitman-Yor or a normalized inverse-Gaussian process ...
We consider Bayesian density estimation using a Pitman-Yor or a normalized inverse-Gaussian process ...
In the need for low assumption inferential methods in infinite-dimensional settings, Bayesian adapti...
In this work we investigate the asymptotic properties of nonparametric bayesian mixtures of Betas fo...
We derive rates of contraction of posterior distributions on nonparametric models resulting from sie...
We study the rate of convergence of posterior distributions in density estimation problems for log-d...
We study the rate of convergence of posterior distributions in density estimation problems for log-d...
We study the Bayes estimation of an infinite dimensional parameter from a Sobolev smoothness class. ...
We study convergence rates of Bayesian density estimators based on finite location-scale mixtures of...
International audienceWe derive rates of contraction of posterior distributions on non-parametric mo...
In this paper, we investigate the asymptotic properties of nonparametric Bayesian mixtures of Betas ...