AbstractBayesian nonparametric models are widely and successfully used for statistical prediction. While posterior consistency properties are well studied in quite general settings, results have been proved using abstract concepts such as metric entropy, and they come with subtle conditions which are hard to validate and not intuitive when applied to concrete models. Furthermore, convergence rates are difficult to obtain. By focussing on the concept of information consistency for Bayesian Gaussian process (GP)models, consistency results and convergence rates are obtained via a regret bound on cumulative log loss. These results depend strongly on the covariance function of the prior process, thereby giving a novel interpretation to penaliza...
We provide sufficient conditions to establish posterior consistency in nonparametric regression prob...
Approximate Bayesian Gaussian process (GP) classification techniques are powerful nonparametric lear...
We consider sufficient conditions for Bayesian consistency of the transition density of time homogen...
AbstractBayesian nonparametric models are widely and successfully used for statistical prediction. ...
In this note, we present additional material for the IEEE Transactions on Informa-tion Theory corres...
Posterior consistency can be thought of as a theoretical justification of the Bayesian method. One o...
We consider the quality of learning a response function by a nonparametric Bayesian approach using a...
Consider binary observations whose response probability is an unknown smooth function of a set of co...
We use rescaled Gaussian processes as prior models for functional parameters in nonparametric statis...
Due to their flexibility Gaussian processes are a well-known Bayesian framework for nonparametric fu...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
In this paper, we provide a Doob-style consistency theorem for stationary models. Many applications ...
Gaussian processes are ubiquitous in machine learning, statistics, and applied mathematics. They pro...
We present a competitive analysis of some non-parametric Bayesian algorithms in a worst-case online ...
We present a competitive analysis of some non-parametric Bayesian algorithms in a worst-case online ...
We provide sufficient conditions to establish posterior consistency in nonparametric regression prob...
Approximate Bayesian Gaussian process (GP) classification techniques are powerful nonparametric lear...
We consider sufficient conditions for Bayesian consistency of the transition density of time homogen...
AbstractBayesian nonparametric models are widely and successfully used for statistical prediction. ...
In this note, we present additional material for the IEEE Transactions on Informa-tion Theory corres...
Posterior consistency can be thought of as a theoretical justification of the Bayesian method. One o...
We consider the quality of learning a response function by a nonparametric Bayesian approach using a...
Consider binary observations whose response probability is an unknown smooth function of a set of co...
We use rescaled Gaussian processes as prior models for functional parameters in nonparametric statis...
Due to their flexibility Gaussian processes are a well-known Bayesian framework for nonparametric fu...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
In this paper, we provide a Doob-style consistency theorem for stationary models. Many applications ...
Gaussian processes are ubiquitous in machine learning, statistics, and applied mathematics. They pro...
We present a competitive analysis of some non-parametric Bayesian algorithms in a worst-case online ...
We present a competitive analysis of some non-parametric Bayesian algorithms in a worst-case online ...
We provide sufficient conditions to establish posterior consistency in nonparametric regression prob...
Approximate Bayesian Gaussian process (GP) classification techniques are powerful nonparametric lear...
We consider sufficient conditions for Bayesian consistency of the transition density of time homogen...