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Bibliographic Details
Main Authors: Gunn, Eva, Sengupta, Nikhil, Swallow, Ben
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.05556
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author Gunn, Eva
Sengupta, Nikhil
Swallow, Ben
author_facet Gunn, Eva
Sengupta, Nikhil
Swallow, Ben
contents Gaussian process are a widely-used statistical tool for conducting non-parametric inference in applied sciences, with many computational packages available to fit to data and predict future observations. We study the use of the Greta software for Bayesian inference to apply Gaussian process regression to spatio-temporal data of infectious disease outbreaks and predict future disease spread. Greta builds on Tensorflow, making it comparatively easy to take advantage of the significant gain in speed offered by GPUs. In these complex spatio-temporal models, we show a reduction of up to 70\% in computational time relative to fitting the same models on CPUs. We show how the choice of covariance kernel impacts the ability to infer spread and extrapolate to unobserved spatial and temporal units. The inference pipeline is applied to weekly incidence data on tuberculosis in the East and West Midlands regions of England over a period of two years.
format Preprint
id arxiv_https___arxiv_org_abs_2411_05556
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Gaussian process modelling of infectious diseases using the Greta software package and GPUs
Gunn, Eva
Sengupta, Nikhil
Swallow, Ben
Computation
Gaussian process are a widely-used statistical tool for conducting non-parametric inference in applied sciences, with many computational packages available to fit to data and predict future observations. We study the use of the Greta software for Bayesian inference to apply Gaussian process regression to spatio-temporal data of infectious disease outbreaks and predict future disease spread. Greta builds on Tensorflow, making it comparatively easy to take advantage of the significant gain in speed offered by GPUs. In these complex spatio-temporal models, we show a reduction of up to 70\% in computational time relative to fitting the same models on CPUs. We show how the choice of covariance kernel impacts the ability to infer spread and extrapolate to unobserved spatial and temporal units. The inference pipeline is applied to weekly incidence data on tuberculosis in the East and West Midlands regions of England over a period of two years.
title Gaussian process modelling of infectious diseases using the Greta software package and GPUs
topic Computation
url https://arxiv.org/abs/2411.05556