Gaussian Process regression is a popular nonparametric regression method based on Bayesian principles that provides uncertainty estimates for its predictions. However, these estimates are of a Bayesian nature, whereas for some important applications, like learning-based control with safety guarantees, frequentist uncertainty bounds are required. Although such rigorous bounds are available for Gaussian Processes, they are too conservative to be useful in applications. This often leads practitioners to replacing these bounds by heuristics, thus breaking all theoretical guarantees. To address this problem, we introduce new uncertainty bounds that are rigorous, yet practically useful at the same time. In particular, the bounds can be explicitly...
We present a competitive analysis of some non-parametric Bayesian algorithms in a worst-case online ...
AbstractBayesian nonparametric models are widely and successfully used for statistical prediction. ...
We consider the quality of learning a response function by a nonparametric Bayesian approach using a...
Gaussian Process Regression is a popular nonparametric regression method based on Bayesian principle...
This paper considers the quantification of the prediction performance in Gaussian process regression...
Gaussian Processes (GPs) are widely employed in control and learning because of their principled tre...
Gaussian process models constitute a class of probabilistic statistical models in which a Gaussian p...
Gaussian Processes (GPs) are widely employed in control and learning because of their principled tre...
Gaussian Processes (GPs) are widely employed in control and learning because of their principled tre...
Bayesian inference and Gaussian processes are widely used in applications ranging from robotics and ...
we demonstrate several techniques to prove safety guarantees for robust control problems with statis...
Bayesian inference and Gaussian processes are widely used in applications ranging from robotics and ...
We present a competitive analysis of some non-parametric Bayesian algorithms in a worst-case online ...
Due to their flexibility Gaussian processes are a well-known Bayesian framework for nonparametric fu...
Gaussian processes (GPs) enable principled computation of model uncertainty, making them attractive ...
We present a competitive analysis of some non-parametric Bayesian algorithms in a worst-case online ...
AbstractBayesian nonparametric models are widely and successfully used for statistical prediction. ...
We consider the quality of learning a response function by a nonparametric Bayesian approach using a...
Gaussian Process Regression is a popular nonparametric regression method based on Bayesian principle...
This paper considers the quantification of the prediction performance in Gaussian process regression...
Gaussian Processes (GPs) are widely employed in control and learning because of their principled tre...
Gaussian process models constitute a class of probabilistic statistical models in which a Gaussian p...
Gaussian Processes (GPs) are widely employed in control and learning because of their principled tre...
Gaussian Processes (GPs) are widely employed in control and learning because of their principled tre...
Bayesian inference and Gaussian processes are widely used in applications ranging from robotics and ...
we demonstrate several techniques to prove safety guarantees for robust control problems with statis...
Bayesian inference and Gaussian processes are widely used in applications ranging from robotics and ...
We present a competitive analysis of some non-parametric Bayesian algorithms in a worst-case online ...
Due to their flexibility Gaussian processes are a well-known Bayesian framework for nonparametric fu...
Gaussian processes (GPs) enable principled computation of model uncertainty, making them attractive ...
We present a competitive analysis of some non-parametric Bayesian algorithms in a worst-case online ...
AbstractBayesian nonparametric models are widely and successfully used for statistical prediction. ...
We consider the quality of learning a response function by a nonparametric Bayesian approach using a...