English

From Model-Based Screening to Data-Driven Surrogates: A Multi-Stage Workflow for Exploring Stochastic Agent-Based Models

Machine Learning 2026-04-07 v1 Artificial Intelligence

Abstract

Systematic exploration of Agent-Based Models (ABMs) is challenged by the curse of dimensionality and their inherent stochasticity. We present a multi-stage pipeline integrating the systematic design of experiments with machine learning surrogates. Using a predator-prey case study, our methodology proceeds in two steps. First, an automated model-based screening identifies dominant variables, assesses outcome variability, and segments the parameter space. Second, we train Machine Learning models to map the remaining nonlinear interaction effects. This approach automates the discovery of unstable regions where system outcomes are highly dependent on nonlinear interactions between many variables. Thus, this work provides modelers with a rigorous, hands-off framework for sensitivity analysis and policy testing, even when dealing with high-dimensional stochastic simulators.

Keywords

Cite

@article{arxiv.2604.03350,
  title  = {From Model-Based Screening to Data-Driven Surrogates: A Multi-Stage Workflow for Exploring Stochastic Agent-Based Models},
  author = {Paul Saves and Matthieu Mastio and Nicolas Verstaevel and Benoit Gaudou},
  journal= {arXiv preprint arXiv:2604.03350},
  year   = {2026}
}

Comments

Published in MABS 2026 - The 27th International Workshop on Multi-Agent-Based Simulation

R2 v1 2026-07-01T11:53:20.287Z