Active Nonlinear Tests (ANTs) of Complex Simulation Models
John H. Miller
Working Papers from Santa Fe Institute
Abstract:
Simulation models are becoming increasingly common in the analysis of critical scientific, policy, and management issues. Such models provide a way to analyze complex systems characterized by both large parameter spaces and nonlinear interactions. Unfortunately, these same characteristics make understanding such models using traditional testing techniques extremely difficult. Here we show how a model's structure and robustness can be tested via a simple, automatic, nonlinear search algorithm designed to actively "break" the model's implications. Using the active nonlinear tests (ANTs) developed here, one can easily probe for key weaknesses in a simulation's structure, and thereby begin to improve and refine the model's design. We demonstrate ANTs by testing a well-known model of global dynamics (World 3), and show how this technique can be used to uncover small, but powerful, nonlinear effects that may highlight vulnerabilities in the original model.
Key words. Testing Simulation Models, Nonlinear Sensitivity Analysis, World3 Model, and Genetic Algorithms
In Management Science 44:6 (June 1998): 820-30.
Date: 1996-03
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Persistent link: https://EconPapers.repec.org/RePEc:wop:safiwp:96-03-011
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