Gaussian processes (GPs) are important probabilistic tools for inference and learning in spatio-temporal modelling problems such as those in climate science and epidemiology. However, existing GP approximations do not simultaneously support large numbers of off-the-grid spatial data-points and long time-series which is a hallmark of many applications. Pseudo-point approximations, one of the gold-standard methods for scaling GPs to large data sets, are well suited for handling off-the-grid spatial data. However, they cannot handle long temporal observation horizons effectively reverting to cubic computational scaling in the time dimension. State space GP approximations are well suited to handling temporal data, if the temporal GP prior admit...
We provide a comprehensive overview and tooling for GP modelling with non-Gaussian likelihoods using...
Sparse pseudo-point approximations for Gaussian process (GP) models provide a suite of methods that ...
A Gaussian Process (GP) is a prominent mathematical framework for stochastic function approximation ...
Gaussian processes (GPs) are important probabilistic tools for inference and learning in spatio-temp...
Gaussian processes (GPs) are important probabilistic tools for inference and learning in spatio-temp...
We introduce a scalable approach to Gaussian process inference that combines spatio-temporal filteri...
Gaussian processes provide a flexible framework for forecasting, removing noise, and interpreting lo...
The analysis of time series data is important for many fields, ranging from meteorology and engineer...
Gaussian processes (GPs) are flexible distributions over functions that enable high-level assumption...
Multi-output Gaussian processes (MOGPs) leverage the flexibility and interpretability of GPs while c...
Multi-output Gaussian processes (MOGPs) leverage the flexibility and interpretability of GPs while c...
This dissertation builds a modeling framework for non-Gaussian spatial processes, time series, and p...
We explore ways to scale Gaussian processes (GP) to large datasets. Two methods with different theor...
Particulate matter (PM) is a class of malicious environmental pollutants known to be detrimental to ...
Gaussian processes are a powerful and flexible class of nonparametric models that use covariance fun...
We provide a comprehensive overview and tooling for GP modelling with non-Gaussian likelihoods using...
Sparse pseudo-point approximations for Gaussian process (GP) models provide a suite of methods that ...
A Gaussian Process (GP) is a prominent mathematical framework for stochastic function approximation ...
Gaussian processes (GPs) are important probabilistic tools for inference and learning in spatio-temp...
Gaussian processes (GPs) are important probabilistic tools for inference and learning in spatio-temp...
We introduce a scalable approach to Gaussian process inference that combines spatio-temporal filteri...
Gaussian processes provide a flexible framework for forecasting, removing noise, and interpreting lo...
The analysis of time series data is important for many fields, ranging from meteorology and engineer...
Gaussian processes (GPs) are flexible distributions over functions that enable high-level assumption...
Multi-output Gaussian processes (MOGPs) leverage the flexibility and interpretability of GPs while c...
Multi-output Gaussian processes (MOGPs) leverage the flexibility and interpretability of GPs while c...
This dissertation builds a modeling framework for non-Gaussian spatial processes, time series, and p...
We explore ways to scale Gaussian processes (GP) to large datasets. Two methods with different theor...
Particulate matter (PM) is a class of malicious environmental pollutants known to be detrimental to ...
Gaussian processes are a powerful and flexible class of nonparametric models that use covariance fun...
We provide a comprehensive overview and tooling for GP modelling with non-Gaussian likelihoods using...
Sparse pseudo-point approximations for Gaussian process (GP) models provide a suite of methods that ...
A Gaussian Process (GP) is a prominent mathematical framework for stochastic function approximation ...