Modelling COVID-19 Pandemic Dynamics Using Transparent, Interpretable, Parsimonious and Simulatable (TIPS) Machine Learning Models: A Case Study from Systems Thinking and System Identification Perspectives
Hua-Liang Wei, S.A. Billings

TL;DR
This paper introduces TIPS models, a new class of transparent, interpretable, and parsimonious machine learning models based on system identification, to analyze COVID-19 pandemic dynamics from a systems perspective, demonstrated through a UK case study.
Contribution
It proposes the first use of systems engineering and system identification to develop interpretable models linking COVID-19 infection metrics, offering new insights into pandemic spread dynamics.
Findings
TIPS models effectively capture COVID-19 spread dynamics.
The models reveal significant time-lagged relationships.
Enhanced understanding of R number, infections, and deaths.
Abstract
Since the outbreak of COVID-19, an astronomical number of publications on the pandemic dynamics appeared in the literature, of which many use the susceptible infected removed (SIR) and susceptible exposed infected removed (SEIR) models, or their variants, to simulate and study the spread of the coronavirus. SIR and SEIR are continuous-time models which are a class of initial value problems (IVPs) of ordinary differential equations (ODEs). Discrete-time models such as regression and machine learning have also been applied to analyze COVID-19 pandemic data (e.g. predicting infection cases), but most of these methods use simplified models involving a small number of input variables pre-selected based on a priori knowledge, or use very complicated models (e.g. deep learning), purely focusing on certain prediction purposes and paying little attention to the model interpretability. There have…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Anomaly Detection Techniques and Applications · SARS-CoV-2 and COVID-19 Research
