The ability to efficiently model complex datasets using probabilistic models is a key component of many machine learning workflows as it offers the ability to extract accurate predictions and well-characterised uncertainty estimates. Consequently, it becomes possible to develop models that can be deployed as decision-making tools. However, evaluating such models is often computationally expensive, particularly when assumptions of independence and identically distributed data can no longer be made. This thesis explores how Gaussian process models can be used to model climate data, and how the kernel function of a Gaussian process can be adapted to operate on data observed on a network. Methodological developments are proposed to enable faste...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
This dissertation consists of three main parts. In the first part, the existing methods of machine l...
The monitoring and forecasting of particulate matter (e.g., PM2.5) and gaseous pollutants (e.g., NO,...
In this PhD thesis we have developed different machine learning models based on Gaussian Processes. ...
Gaussian processes (GPs) have experienced tremendous success in biogeophysical parameter retrieval i...
A statistical framework for spatiotemporal modelling should ideally be able to assimilate different ...
2007 I, Edward Snelson, confirm that the work presented in this thesis is my own. Where information ...
Gaussian processes are rich distributions over functions, which provide a Bayesian nonparametric app...
A comprehensive and self-contained introduction to Gaussian processes, which provide a principled, p...
The dynamics of complex systems are commonly explored via the use of computer simulators. To ensure ...
Forecasting air pollution is a challenging problem today that requires special attention in large ci...
In this dissertation, the flexibility of Bayesian hierarchical models specified using a latent Gauss...
Bayesian learning using Gaussian processes provides a foundational framework for making decisions in...
This thesis details several applications of Gaussian processes (GPs) for enhanced time series modeli...
When analyzing environmental data, constructing a realistic statistical model is important, not only...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
This dissertation consists of three main parts. In the first part, the existing methods of machine l...
The monitoring and forecasting of particulate matter (e.g., PM2.5) and gaseous pollutants (e.g., NO,...
In this PhD thesis we have developed different machine learning models based on Gaussian Processes. ...
Gaussian processes (GPs) have experienced tremendous success in biogeophysical parameter retrieval i...
A statistical framework for spatiotemporal modelling should ideally be able to assimilate different ...
2007 I, Edward Snelson, confirm that the work presented in this thesis is my own. Where information ...
Gaussian processes are rich distributions over functions, which provide a Bayesian nonparametric app...
A comprehensive and self-contained introduction to Gaussian processes, which provide a principled, p...
The dynamics of complex systems are commonly explored via the use of computer simulators. To ensure ...
Forecasting air pollution is a challenging problem today that requires special attention in large ci...
In this dissertation, the flexibility of Bayesian hierarchical models specified using a latent Gauss...
Bayesian learning using Gaussian processes provides a foundational framework for making decisions in...
This thesis details several applications of Gaussian processes (GPs) for enhanced time series modeli...
When analyzing environmental data, constructing a realistic statistical model is important, not only...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
This dissertation consists of three main parts. In the first part, the existing methods of machine l...
The monitoring and forecasting of particulate matter (e.g., PM2.5) and gaseous pollutants (e.g., NO,...