The main challenges that arise when adopting Gaussian process priors in probabilistic modeling are how to carry out exact Bayesian inference and how to account for uncertainty on model parameters when making model-based predictions on out-of-sample data. Using probit regression as an illustrative working example, this paper presents a general and effective methodology based on the pseudo-marginal approach to Markov chain Monte Carlo that efficiently addresses both of these issues. The results presented in this paper show improvements over existing sampling methods to simulate from the posterior distribution over the parameters defining the covariance function of the Gaussian Process prior. This is particularly important as it offers a power...
This dissertation aims at introducing Gaussian process priors on the regression to capture features ...
Gaussian process priors can be used to define flexible, probabilistic classification models. Unfortu...
The full Bayesian method for applying neural networks to a prediction problem is to set up the prior...
The main challenges that arise when adopting Gaussian Process priors in probabilistic modeling are h...
The main challenges that arise when adopting Gaussian Process priors in probabilistic modeling are h...
A Bayesian inference framework for supervised Gaussian process latent variable models is introduced....
Abstract—Kernel methods have revolutionized the fields of pattern recognition and machine learning. ...
Abstract. Gaussian processes are a natural way of dening prior distributions over func-tions of one ...
Scope of this work Gaussian Process models (GPMs) are extensively used in data analysis given their ...
Gaussian process models constitute a class of probabilistic statistical models in which a Gaussian p...
Gaussian process models constitute a class of probabilistic statistical models in which a Gaussian p...
Gaussian Process (GP) models are extensively used in data analysis given their flexible modeling cap...
Gaussian Process (GP) models are extensively used in data analysis given their flexible modeling cap...
Abstract—Kernel methods have revolutionized the fields of pattern recognition and machine learning. ...
Gaussian processes are powerful nonparametric distributions over continuous functions that have beco...
This dissertation aims at introducing Gaussian process priors on the regression to capture features ...
Gaussian process priors can be used to define flexible, probabilistic classification models. Unfortu...
The full Bayesian method for applying neural networks to a prediction problem is to set up the prior...
The main challenges that arise when adopting Gaussian Process priors in probabilistic modeling are h...
The main challenges that arise when adopting Gaussian Process priors in probabilistic modeling are h...
A Bayesian inference framework for supervised Gaussian process latent variable models is introduced....
Abstract—Kernel methods have revolutionized the fields of pattern recognition and machine learning. ...
Abstract. Gaussian processes are a natural way of dening prior distributions over func-tions of one ...
Scope of this work Gaussian Process models (GPMs) are extensively used in data analysis given their ...
Gaussian process models constitute a class of probabilistic statistical models in which a Gaussian p...
Gaussian process models constitute a class of probabilistic statistical models in which a Gaussian p...
Gaussian Process (GP) models are extensively used in data analysis given their flexible modeling cap...
Gaussian Process (GP) models are extensively used in data analysis given their flexible modeling cap...
Abstract—Kernel methods have revolutionized the fields of pattern recognition and machine learning. ...
Gaussian processes are powerful nonparametric distributions over continuous functions that have beco...
This dissertation aims at introducing Gaussian process priors on the regression to capture features ...
Gaussian process priors can be used to define flexible, probabilistic classification models. Unfortu...
The full Bayesian method for applying neural networks to a prediction problem is to set up the prior...