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ML-ABC: Machine-learning assisted Approximate Bayesian Computation for efficient calibration of agent-based models

Thomas Bayley1, Tony Ward1, Fabian Sturman2

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Summary
This summary is machine-generated.

We developed a faster method, Machine-Learning Approximate Bayesian Computation (ML-ABC), to calibrate complex agent-based models (ABMs) for COVID-19. This approach improves efficiency and parameter uncertainty quantification for epidemic modeling.

Keywords:
Agent-based modelsInfectious disease modellingMachine-learning algorithmsOutbreak control

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Area of Science:

  • Epidemiology
  • Computational Biology
  • Mathematical Modeling

Background:

  • Agent-based models (ABMs) are crucial for epidemic modeling but complex to calibrate.
  • Bayesian methods for parameter uncertainty quantification in ABMs are computationally challenging.
  • COVID-19 pandemic highlighted the need for efficient and robust epidemic modeling calibration.

Purpose of the Study:

  • To introduce and evaluate a novel Machine-Learning Approximate Bayesian Computation (ML-ABC) method for calibrating ABMs.
  • To improve the efficiency and robustness of ABM calibration for epidemic data.
  • To quantify parameter uncertainty effectively in complex ABMs.

Main Methods:

  • Developed ML-ABC by combining a Machine-Learning step with Approximate Bayesian Computation.
  • Applied ML-ABC to calibrate the Covasim stochastic ABM using COVID-19 hospitalization and death data.
  • Benchmarked ML-ABC against traditional Rejection-ABC (R-ABC) for efficiency and accuracy.

Main Results:

  • ML-ABC achieved identical posterior distributions of calibrated parameters as R-ABC.
  • ML-ABC demonstrated significant speed improvements: 52% faster for the first wave and 33% faster for the second wave.
  • The method proved robust across different epidemic scenarios.

Conclusions:

  • ML-ABC offers a more efficient and robust approach to calibrating ABMs compared to traditional methods.
  • This novel method enhances the ability to quantify parameter uncertainty in ABMs.
  • ML-ABC has the potential to make Approximate Bayesian Computation competitive with point-estimate calibration, crucial for real-time epidemic modeling.