We provide a comprehensive overview of many recent algorithms for approximate inference in Gaussian process models for probabilistic binary classification. The relationships between several approaches are elucidated theoretically, and the properties of the different algorithms are corroborated by experimental results. We examine both 1) the quality of the predictive distributions and 2) the suitability of the different marginal likelihood approximations for model selection (selecting hyperparameters) and compare to a gold standard based on MCMC. Interestingly, some methods produce good predictive distributions although their marginal likelihood approximations are poor. Strong conclusions are drawn about the methods: The Expectation Propagat...
In recent years there has been an increased interest in applying non-parametric methods to real-worl...
Gaussian Process (GP) inference is a probabilistic kernel method where the GP is treated as a latent...
The main challenges that arise when adopting Gaussian process priors in probabilistic modeling are h...
We provide a comprehensive overview of many recent algorithms for approximate inference in Gaussian ...
Gaussian process priors can be used to define flexible, probabilistic classification models. Unfortu...
Gaussian processes are attractive models for probabilistic classification but unfortunately exact in...
Gaussian processes are powerful nonparametric distributions over continuous functions that have beco...
Gaussian processes are attractive models for probabilistic classification but unfortunately exact in...
The aim of this paper is to compare four different methods for binary classification with an underly...
In binary Gaussian process classification the prior class membership probabilities are obtained by t...
Gaussian Process (GP) models are extensively used in data analysis given their flexible modeling cap...
Gaussian process models constitute a class of probabilistic statistical models in which a Gaussian p...
A wealth of computationally efficient approximation methods for Gaussian process regression have bee...
84 pagesGaussian processes are powerful Bayesian non-parametric models used for their closed-form po...
Gaussian process (GP) predictors are an important component of many Bayesian approaches to machine l...
In recent years there has been an increased interest in applying non-parametric methods to real-worl...
Gaussian Process (GP) inference is a probabilistic kernel method where the GP is treated as a latent...
The main challenges that arise when adopting Gaussian process priors in probabilistic modeling are h...
We provide a comprehensive overview of many recent algorithms for approximate inference in Gaussian ...
Gaussian process priors can be used to define flexible, probabilistic classification models. Unfortu...
Gaussian processes are attractive models for probabilistic classification but unfortunately exact in...
Gaussian processes are powerful nonparametric distributions over continuous functions that have beco...
Gaussian processes are attractive models for probabilistic classification but unfortunately exact in...
The aim of this paper is to compare four different methods for binary classification with an underly...
In binary Gaussian process classification the prior class membership probabilities are obtained by t...
Gaussian Process (GP) models are extensively used in data analysis given their flexible modeling cap...
Gaussian process models constitute a class of probabilistic statistical models in which a Gaussian p...
A wealth of computationally efficient approximation methods for Gaussian process regression have bee...
84 pagesGaussian processes are powerful Bayesian non-parametric models used for their closed-form po...
Gaussian process (GP) predictors are an important component of many Bayesian approaches to machine l...
In recent years there has been an increased interest in applying non-parametric methods to real-worl...
Gaussian Process (GP) inference is a probabilistic kernel method where the GP is treated as a latent...
The main challenges that arise when adopting Gaussian process priors in probabilistic modeling are h...