ABM-UDE: Developing Surrogates for Epidemic Agent-Based Models via Scientific Machine Learning
Sharv Murgai, Utkarsh Utkarsh, Kyle C. Nguyen, Alan Edelman, Erin C. S. Acquesta, Christopher Vincent Rackauckas

TL;DR
This paper introduces a method to create fast, accurate surrogates for complex agent-based epidemic models using scientific machine learning, enabling real-time scenario analysis and decision-making.
Contribution
We adapt multiple shooting and prediction-error methods to stabilize neural-augmented epidemiological models, ensuring positivity, conservation, and interpretability, with significant improvements in accuracy and computational efficiency.
Findings
PEM-UDE reduces mean MSE by 77% compared to single-shooting UDE.
Reliability and calibration of uncertainty bands are significantly improved.
Inference runs in seconds, enabling nightly scenario planning on standard hardware.
Abstract
Agent-based epidemic models (ABMs) encode behavioral and policy heterogeneity but are too slow for nightly hospital planning. We develop county-ready surrogates that learn directly from exascale ABM trajectories using Universal Differential Equations (UDEs): mechanistic SEIR-family ODEs with a neural-parameterized contact rate (no additive residual). Our contributions are threefold: we adapt multiple shooting and an observer-based prediction-error method (PEM) to stabilize identification of neural-augmented epidemiological dynamics across intervention-driven regime shifts; we enforce positivity and mass conservation and show the learned contact-rate parameterization yields a well-posed vector field; and we quantify accuracy, calibration, and compute against ABM ensembles and UDE baselines. On a representative ExaEpi scenario, PEM-UDE reduces mean MSE by 77% relative…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Mathematical and Theoretical Epidemiology and Ecology Models · Data-Driven Disease Surveillance
