A Framework for the Comparison of Agent-based Models

Auton Agent Multi Agent Syst. 2022 Oct;36(2):32. doi: 10.1007/s10458-022-09559-5. Epub 2022 May 11.

Abstract

We develop a methodology for comparing agent-based models that are developed for the same domain, but may differ in the data sets (e.g., geographical regions) to which they are applied, and in the structure of the model. Our approach is to learn a response surface in the common parameter space of the models and compare the regions corresponding to qualitatively different behaviors in the models. As an example, we develop an active learning algorithm to learn phase shift boundaries in contagion processes in order to compare two agent-based models of rooftop solar panel adoption developed for different regions. We present results for 2D and 3D subspaces of the parameter space, though the approach scales to higher dimensions as well.

Keywords: active learning; agent-based modeling; model comparison; response surface methods.