Unifying Epidemic Models with Mixtures
Arnab Sarker, Ali Jadbabaie, Devavrat Shah

TL;DR
This paper introduces a mixture-based epidemic model that combines mechanistic and non-mechanistic approaches, offering flexible data fitting and meaningful parameter interpretation, validated through COVID-19 data and mobility insights.
Contribution
A novel mixture model unifying mechanistic and non-mechanistic epidemic modeling, with a learning algorithm and theoretical guarantees for data-driven epidemic analysis.
Findings
Low prediction error demonstrated empirically
Model parameters align with mobility data
Efficient learning from epidemic time series
Abstract
The COVID-19 pandemic has emphasized the need for a robust understanding of epidemic models. Current models of epidemics are classified as either mechanistic or non-mechanistic: mechanistic models make explicit assumptions on the dynamics of disease, whereas non-mechanistic models make assumptions on the form of observed time series. Here, we introduce a simple mixture-based model which bridges the two approaches while retaining benefits of both. The model represents time series of cases and fatalities as a mixture of Gaussian curves, providing a flexible function class to learn from data compared to traditional mechanistic models. Although the model is non-mechanistic, we show that it arises as the natural outcome of a stochastic process based on a networked SIR framework. This allows learned parameters to take on a more meaningful interpretation compared to similar non-mechanistic…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · COVID-19 epidemiological studies · Data-Driven Disease Surveillance
