We consider the asymptotic behaviour of posterior distributions based on continuous observations from a Brownian semimartingale model. We present a general result that bounds the posterior rate of convergence in terms of the complexity of the model and the amount of prior mass given to balls centred around the true parameter. This result is illustrated for three special cases of the model: the Gaussian white-noise model, the perturbed dynamical system and the ergodic diffusion model. Some examples for specific priors are discussed as well
We consider the asymptotic behavior of posterior distributions and Bayes estimators for infinite-dim...
In this paper we consider the use of Brownian motion as a prior in a nonparametric, univariate regre...
We study the rates of convergence of the posterior distribution for Bayesian density estimation with...
We consider the asymptotic behaviour of posterior distributions based on continuous observations fro...
In this paper we present a unified approach to obtaining rates of convergence for the maximum likeli...
Citation for published version (APA): Zanten, van, J. H. (2005). On the rate of convergence of the m...
This paper introduces a new approach to the study of rates of convergence for posterior distribution...
We study the asymptotic behavior of posterior distributions for i.i.d. data. We present general post...
AbstractIn this paper, the asymptotic behavior of posterior distributions on parameters contained in...
In this paper, we adopt a nonparametric Bayesian approach and investigate the asymptotic behavior of...
AbstractSequential statistical models such as dynamic Bayesian networks and hidden Markov models mor...
We derive rates of contraction of posterior distributions on nonparametric or semiparametric models ...
We consider the asymptotic behavior of posterior distributions and Bayes estimators for infinite-dim...
In this paper we consider the use of Brownian motion as a prior in a nonparametric, univariate regre...
We study the rates of convergence of the posterior distribution for Bayesian density estimation with...
We consider the asymptotic behaviour of posterior distributions based on continuous observations fro...
In this paper we present a unified approach to obtaining rates of convergence for the maximum likeli...
Citation for published version (APA): Zanten, van, J. H. (2005). On the rate of convergence of the m...
This paper introduces a new approach to the study of rates of convergence for posterior distribution...
We study the asymptotic behavior of posterior distributions for i.i.d. data. We present general post...
AbstractIn this paper, the asymptotic behavior of posterior distributions on parameters contained in...
In this paper, we adopt a nonparametric Bayesian approach and investigate the asymptotic behavior of...
AbstractSequential statistical models such as dynamic Bayesian networks and hidden Markov models mor...
We derive rates of contraction of posterior distributions on nonparametric or semiparametric models ...
We consider the asymptotic behavior of posterior distributions and Bayes estimators for infinite-dim...
In this paper we consider the use of Brownian motion as a prior in a nonparametric, univariate regre...
We study the rates of convergence of the posterior distribution for Bayesian density estimation with...