New tools for network time series with an application to COVID-19 hospitalisations
Guy Nason, Daniel Salnikov, Mario Cortina-Borja

TL;DR
This paper introduces new tools and models for analyzing network time series, demonstrated through COVID-19 hospitalisation data, enabling better interpretation, visualization, and prediction of complex dynamic systems.
Contribution
The paper develops the GNAR framework with novel association measures, Corbit plots, and theoretical connections to graphical models, enhancing analysis and prediction of network time series.
Findings
Corbit plots improve model selection speed.
GNAR models outperform existing techniques in COVID-19 data prediction.
Identification of influential NHS Trusts and co-located groups.
Abstract
Network time series are becoming increasingly important across many areas in science and medicine and are often characterised by a known or inferred underlying network structure, which can be exploited to make sense of dynamic phenomena that are often high-dimensional. For example, the Generalised Network Autoregressive (GNAR) models exploit such structure parsimoniously. We use the GNAR framework to introduce two association measures: the network and partial network autocorrelation functions, and introduce Corbit (correlation-orbit) plots for visualisation. As with regular autocorrelation plots, Corbit plots permit interpretation of underlying correlation structures and, crucially, aid model selection more rapidly than using other tools such as AIC or BIC. We additionally interpret GNAR processes as generalised graphical models, which constrain the processes' autoregressive structure…
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Taxonomy
TopicsMental Health Research Topics · Complex Systems and Time Series Analysis · Functional Brain Connectivity Studies
