We consider nonparametric Bayesian estimation of a probability density p based on a random sample of size n from this density using a hierarchical prior. The prior consists, for instance, of prior weights on the regularity of the unknown density combined with priors that are appropriate given that the density has this regularity. More generally, the hierarchy consists of prior weights on an abstract model index and a prior on a density model for each model index. We present a general theorem on the rate of contraction of the resulting posterior distribution as n¿8, which gives conditions under which the rate of contraction is the one attached to the model that best approximates the true density of the obser- vations. This shows that, for in...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
Alternatives to the Dirichlet prior for multinomial probabilities are explored. The Dirichlet prior ...
Prior specification for nonparametric Bayesian inference involves the difficult task of quan-tifying...
We consider nonparametric Bayesian estimation of a probability density p based on a random sample of...
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...
In this paper, we investigate the asymptotic properties of nonparametric Bayesian mixtures of Betas ...
International audienceIn this paper we investigate the asymptotic properties of non- parametric baye...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
A class of nonparametric hierarchical mixtures is considered for Bayesian density estimation. This c...
A class of nonparametric hierarchical mixtures is considered for Bayesian density estimation. This ...
In this paper a new type of prior is proposed that could be suitable in the context of model selecti...
The availability of complex-structured data has sparked new research directions in statistics and ma...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
Alternatives to the Dirichlet prior for multinomial probabilities are explored. The Dirichlet prior ...
Prior specification for nonparametric Bayesian inference involves the difficult task of quan-tifying...
We consider nonparametric Bayesian estimation of a probability density p based on a random sample of...
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...
In this paper, we investigate the asymptotic properties of nonparametric Bayesian mixtures of Betas ...
International audienceIn this paper we investigate the asymptotic properties of non- parametric baye...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
A class of nonparametric hierarchical mixtures is considered for Bayesian density estimation. This c...
A class of nonparametric hierarchical mixtures is considered for Bayesian density estimation. This ...
In this paper a new type of prior is proposed that could be suitable in the context of model selecti...
The availability of complex-structured data has sparked new research directions in statistics and ma...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
Alternatives to the Dirichlet prior for multinomial probabilities are explored. The Dirichlet prior ...
Prior specification for nonparametric Bayesian inference involves the difficult task of quan-tifying...