We consider sufficient conditions for Bayesian consistency of the transition density of time homogeneous Markov processes. To date, this remains somewhat of an open problem, due to the lack of suitable metrics with which to work. Standard metrics seem inadequate, even for simple autoregressive models. Current results derive from generalizations of the i.i.d. case and additionally require some non-trivial model assumptions. We propose suitable neighborhoods with which to work and derive sufficient conditions for posterior consistency which can be applied in general settings. We illustrate the applicability of our result with some examples; in particular, we apply our result to a general family of nonparametric time series models
AbstractBayesian nonparametric models are widely and successfully used for statistical prediction. ...
We prove the consistency of the maximum likelihood estimator for a large family of models ...
Bayesian consistency is an important issue in the context of non- parametric problems. The posterior...
We consider sufficient conditions for Bayesian consistency of the transition density of time homogen...
We consider sufficient conditions for Bayesian consistency of the transition density of time homogen...
We consider sufficient conditions for Bayesian consistency of the transition density of time homogen...
We consider sufficient conditions for Bayesian consistency of the transition density of time homogen...
In this paper, we provide a Doob-style consistency theorem for stationary models. Many applications ...
In this paper, we provide a Doob-style consistency theorem for stationary models. Many applications ...
In this paper we study posterior consistency for different topologies on the parameters for hidden M...
This paper contributes to the theory of Bayesian consistency for a sequence of posterior and predict...
Consider the problem of consistent Bayesian estimation of a stationary “k’th-order Markov process ” ...
The consistency of the Bayesian estimation of a parameter is shown for a class of ergodic discrete M...
We prove the consistency of the maximum likelihood estimator for a large family of models ...
We prove the consistency of the maximum likelihood estimator for a large family of models ...
AbstractBayesian nonparametric models are widely and successfully used for statistical prediction. ...
We prove the consistency of the maximum likelihood estimator for a large family of models ...
Bayesian consistency is an important issue in the context of non- parametric problems. The posterior...
We consider sufficient conditions for Bayesian consistency of the transition density of time homogen...
We consider sufficient conditions for Bayesian consistency of the transition density of time homogen...
We consider sufficient conditions for Bayesian consistency of the transition density of time homogen...
We consider sufficient conditions for Bayesian consistency of the transition density of time homogen...
In this paper, we provide a Doob-style consistency theorem for stationary models. Many applications ...
In this paper, we provide a Doob-style consistency theorem for stationary models. Many applications ...
In this paper we study posterior consistency for different topologies on the parameters for hidden M...
This paper contributes to the theory of Bayesian consistency for a sequence of posterior and predict...
Consider the problem of consistent Bayesian estimation of a stationary “k’th-order Markov process ” ...
The consistency of the Bayesian estimation of a parameter is shown for a class of ergodic discrete M...
We prove the consistency of the maximum likelihood estimator for a large family of models ...
We prove the consistency of the maximum likelihood estimator for a large family of models ...
AbstractBayesian nonparametric models are widely and successfully used for statistical prediction. ...
We prove the consistency of the maximum likelihood estimator for a large family of models ...
Bayesian consistency is an important issue in the context of non- parametric problems. The posterior...