Decision-making with gaussian processes: sampling strategies and monte carlo methods
File(s)
Author(s)
Wilson, James
Type
Thesis or dissertation
Abstract
We study Gaussian processes and their application to decision-making in the real world. We begin by reviewing the foundations of Bayesian decision theory and show how these ideas give rise to methods such as Bayesian optimization. We investigate practical techniques for carrying out these strategies, with an emphasis on estimating and maximizing acquisition functions. Finally, we introduce pathwise approaches to conditioning Gaussian processes and demonstrate key benefits for representing random variables in this manner.
Version
Open Access
Date Issued
2022-04
Date Awarded
2023-07
Copyright Statement
Creative Commons Attribution NonCommercial Licence
Advisor
Deisenroth, Marc
Publisher Department
Computing
Publisher Institution
Imperial College London
Qualification Level
Doctoral
Qualification Name
Doctor of Philosophy (PhD)