Gaussian Process State Space Models aim at constructing models of nonlinear dynamical systems capable of quantifying the uncertainty in their predictions. By means of sampling in a noisy environment and covariance functions, Gaussian Process regression techniques aim to infer an estimate of the underlying function as well as a probabilistic confidence interval. Optimally choosing sample points is crucial for system identification and control as it conforms, together with the prior knowledge, all the information available to approach the inference problem. The error between the real system and the estimation, as well as its probabilistic confidence interval, directly depend on a measure of the true function complexity, the maximum informatio...
This manuscript focuses on Bayesian modeling of unknown functions with Gaussian processes. This task...
Bayesian inference and Gaussian processes are widely used in applications ranging from robotics and ...
International audienceIn this paper we deal with the estimation of a feasible set defined by an ineq...
Gaussian Process State Space Models aim at constructing models of nonlinear dynamical systems capabl...
The study of dynamical systems is widespread across several areas of knowledge. Sequential data is g...
Gaussian processes are among the most useful tools in modeling continuous processes in machine learn...
State-space inference and learning with Gaussian processes (GPs) is an unsolved problem. We propose ...
Despite the ubiquity of the Gaussian process regression model, few theoretical results are available...
Gaussianity tests have been used for decades in statistics to determine if a dataset is well modeled...
La famille de modèles dite des filtres de Kalman permet d'estimer les états d'un système dynamique à...
Modern data analysis provides scientists with statistical and machine learning algorithmswith impres...
We propose a data-driven approach to quantify the uncertainty of models constructed by kernel method...
When learning continuous dynamical systems with Gaussian Processes, computing trajectories requires ...
In this paper, we extend the correspondence between Bayesian estimation and optimal smoothing in a R...
We study optimal algorithms for linear problems in two settings: the average case and the probabilis...
This manuscript focuses on Bayesian modeling of unknown functions with Gaussian processes. This task...
Bayesian inference and Gaussian processes are widely used in applications ranging from robotics and ...
International audienceIn this paper we deal with the estimation of a feasible set defined by an ineq...
Gaussian Process State Space Models aim at constructing models of nonlinear dynamical systems capabl...
The study of dynamical systems is widespread across several areas of knowledge. Sequential data is g...
Gaussian processes are among the most useful tools in modeling continuous processes in machine learn...
State-space inference and learning with Gaussian processes (GPs) is an unsolved problem. We propose ...
Despite the ubiquity of the Gaussian process regression model, few theoretical results are available...
Gaussianity tests have been used for decades in statistics to determine if a dataset is well modeled...
La famille de modèles dite des filtres de Kalman permet d'estimer les états d'un système dynamique à...
Modern data analysis provides scientists with statistical and machine learning algorithmswith impres...
We propose a data-driven approach to quantify the uncertainty of models constructed by kernel method...
When learning continuous dynamical systems with Gaussian Processes, computing trajectories requires ...
In this paper, we extend the correspondence between Bayesian estimation and optimal smoothing in a R...
We study optimal algorithms for linear problems in two settings: the average case and the probabilis...
This manuscript focuses on Bayesian modeling of unknown functions with Gaussian processes. This task...
Bayesian inference and Gaussian processes are widely used in applications ranging from robotics and ...
International audienceIn this paper we deal with the estimation of a feasible set defined by an ineq...