We consider estimating a probability density p based on a random sample from this density by a Bayesian approach. The prior is constructed in two steps, by first constructing priors on a collection of models each expressing a qualitative prior guess on the true density, and next combining these priors in an overall prior by attaching prior weights to the models. The purpose is to show that the posterior distribution contracts to the true distribution at a rate that is (nearly) equal to the rate that would have been obtained had only the model that is most suitable for the true density been used. We study special model weights that yield this adaptation property in some generality. Examples include minimal discrete priors and finite-dimensio...
Abstract: We consider nonparametric Bayesian estimation of a probabil-ity density p based on a rando...
In the need for low assumption inferential methods in infinite-dimensional settings, Bayesian adapti...
In the need for low assumption inferential methods in infinite-dimensional settings, Bayesian adapti...
We consider estimating a probability density p based on a random sample from this density by a Bayes...
We consider estimating a probability density p based on a random sample from this density by a Bayes...
Summary: We consider estimating a probability density p based on a random sample from this density b...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We consider nonparametric Bayesian estimation of a probability density p based on a random sample of...
We consider nonparametric Bayesian estimation of a probability density p based on a random sample of...
Abstract: We consider nonparametric Bayesian estimation of a probabil-ity density p based on a rando...
In the need for low assumption inferential methods in infinite-dimensional settings, Bayesian adapti...
In the need for low assumption inferential methods in infinite-dimensional settings, Bayesian adapti...
We consider estimating a probability density p based on a random sample from this density by a Bayes...
We consider estimating a probability density p based on a random sample from this density by a Bayes...
Summary: We consider estimating a probability density p based on a random sample from this density b...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We show that Bayes estimators of an unknown density can adapt to unknown smoothness of the density. ...
We consider nonparametric Bayesian estimation of a probability density p based on a random sample of...
We consider nonparametric Bayesian estimation of a probability density p based on a random sample of...
Abstract: We consider nonparametric Bayesian estimation of a probabil-ity density p based on a rando...
In the need for low assumption inferential methods in infinite-dimensional settings, Bayesian adapti...
In the need for low assumption inferential methods in infinite-dimensional settings, Bayesian adapti...