Gaussian processes (GPs) are flexible distributions over functions that enable high-level assumptions about unknown functions to be encoded in a parsimonious, flexible and general way. Although elegant, the application of GPs is limited by computational and analytical intractabilities that arise when data are sufficiently numerous or when employing non-Gaussian models. Consequently, a wealth of GP approximation schemes have been developed over the last 15 years to address these key limitations. Many of these schemes employ a small set of pseudo data points to summarise the actual data. In this paper we develop a new pseudo-point approximation framework using Power Expectation Propagation (Power EP) that unifies a large number of these pseud...
Gaussian processes are a powerful and flexible class of nonparametric models that use covariance fun...
Rich and complex time-series data, such as those generated from engineering systems, financial marke...
We formulate approximate Bayesian inference in non-conjugate temporal and spatio-temporal Gaussian p...
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 (GPs) provide a probabilistic nonparametric representation of functions in regres...
Gaussian processes are attractive models for probabilistic classification but unfortunately exact in...
Sparse pseudo-point approximations for Gaussian process (GP) models provide a suite of methods that ...
In recent years there has been an increased interest in applying non-parametric methods to real-worl...
We derive the Expectation Propagation algorithm updates for approximating the posterior distribution...
Gaussian processes (GPs) are important probabilistic tools for inference and learning in spatio-temp...
This is the final version of the article. It first appeared at http://jmlr.org/proceedings/papers/v3...
Gaussian processes (GPs) are important probabilistic tools for inference and learning in spatio-temp...
A wealth of computationally efficient approximation methods for Gaussian process regression have bee...
We propose a novel framework for approximations to intractable probabilistic models which is based o...
Gaussian processes are a powerful and flexible class of nonparametric models that use covariance fun...
Rich and complex time-series data, such as those generated from engineering systems, financial marke...
We formulate approximate Bayesian inference in non-conjugate temporal and spatio-temporal Gaussian p...
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 (GPs) provide a probabilistic nonparametric representation of functions in regres...
Gaussian processes are attractive models for probabilistic classification but unfortunately exact in...
Sparse pseudo-point approximations for Gaussian process (GP) models provide a suite of methods that ...
In recent years there has been an increased interest in applying non-parametric methods to real-worl...
We derive the Expectation Propagation algorithm updates for approximating the posterior distribution...
Gaussian processes (GPs) are important probabilistic tools for inference and learning in spatio-temp...
This is the final version of the article. It first appeared at http://jmlr.org/proceedings/papers/v3...
Gaussian processes (GPs) are important probabilistic tools for inference and learning in spatio-temp...
A wealth of computationally efficient approximation methods for Gaussian process regression have bee...
We propose a novel framework for approximations to intractable probabilistic models which is based o...
Gaussian processes are a powerful and flexible class of nonparametric models that use covariance fun...
Rich and complex time-series data, such as those generated from engineering systems, financial marke...
We formulate approximate Bayesian inference in non-conjugate temporal and spatio-temporal Gaussian p...