Gaussian processes are powerful regression models specified by parameterized mean and covariance functions. Standard approaches to choose these parameters (known by the name hyperparameters) are maximum likelihood and maximum a posteriori. In this article, we propose and investigate predictive approaches based on Geisser's predictive sample\ud reuse (PSR) methodology and the related Stone's cross-validation ICV) methodology. More specifically, we derive results for Geisser's surrogate predictive probability (GPP), Geisser's predictive mean square error (GPE), and the standard CV error and make a comparative study. Within an approximation we arrive at the generalized cross-validation (GCV) and establish its relationship with the GPP and GPE ...
Gaussian process regression (GPR) is a kernel-based nonparametric method that has been proved to be ...
Gaussian process models constitute a class of probabilistic statistical models in which a Gaussian p...
This dissertation aims at introducing Gaussian process priors on the regression to capture features ...
Gaussian Processes are powerful regression models specified by parametrized mean and covariance func...
The hyperparameters in Gaussian process regression (GPR) model with a specified kernel are often est...
International audienceIn the framework of emulation of numerical simulators with Gaussian process (G...
Gaussian process (GP) regression is a Bayesian non-parametric regression model, showing good perform...
Probabilistic regression models typically use the Maximum Likelihood Estimation or Cross-Validation ...
This article revisits the fundamental problem of parameter selection for Gaussian process interpolat...
Abstract. Gaussian processes are a natural way of dening prior distributions over func-tions of one ...
The Maximum Likelihood (ML) and Cross Validation (CV) methods for esti-mating covariance hyper-param...
International audienceThe Maximum Likelihood (ML) and Cross Validation (CV) methods for estimating c...
grantor: University of TorontoThis thesis develops two Bayesian learning methods relying o...
This report tends to provide details on how to perform predictions using Gaussian process regression...
Gaussian process regression (GPR) is a kernel-based nonparametric method that has been proved to be ...
Gaussian process models constitute a class of probabilistic statistical models in which a Gaussian p...
This dissertation aims at introducing Gaussian process priors on the regression to capture features ...
Gaussian Processes are powerful regression models specified by parametrized mean and covariance func...
The hyperparameters in Gaussian process regression (GPR) model with a specified kernel are often est...
International audienceIn the framework of emulation of numerical simulators with Gaussian process (G...
Gaussian process (GP) regression is a Bayesian non-parametric regression model, showing good perform...
Probabilistic regression models typically use the Maximum Likelihood Estimation or Cross-Validation ...
This article revisits the fundamental problem of parameter selection for Gaussian process interpolat...
Abstract. Gaussian processes are a natural way of dening prior distributions over func-tions of one ...
The Maximum Likelihood (ML) and Cross Validation (CV) methods for esti-mating covariance hyper-param...
International audienceThe Maximum Likelihood (ML) and Cross Validation (CV) methods for estimating c...
grantor: University of TorontoThis thesis develops two Bayesian learning methods relying o...
This report tends to provide details on how to perform predictions using Gaussian process regression...
Gaussian process regression (GPR) is a kernel-based nonparametric method that has been proved to be ...
Gaussian process models constitute a class of probabilistic statistical models in which a Gaussian p...
This dissertation aims at introducing Gaussian process priors on the regression to capture features ...