Computational Aspects of Deep Gaussian Processes in Data Science

Lead Research Organisation: Heriot-Watt University
Department Name: S of Mathematical and Computer Sciences

Abstract

My project's area of research is the investigation of continuous-time/space models in data science. In particular, I study deep Gaussian processes. Applications for this modelling tool are abundant, thanks to its capacity of representing multi-scale behaviour. Examples where this property is of great importance include climate modelling and image analysis. Such applications give rise to the necessity of solving "standard" machine learning tasks such as regression and inference problems that are based on (deep) Gaussian processes. As of today, sampling from such models is computationally very expensive. My goal in this project is thus to improve existing sampling techniques and to develop new strategies for generating samples in a more efficient way. At a later stage, I would like to employ deep Gaussian process priors in Bayesian inference. To this end, I study efficient Markov chain Monte Carlo methods.

Publications

10 25 50

Studentship Projects

Project Reference Relationship Related To Start End Student Name
EP/W523999/1 01/10/2021 30/09/2025
2616566 Studentship EP/W523999/1 01/10/2021 31/08/2025 Simon Urbainczyk