2025/30 | LEM Working Paper Series | ||||||||||||||||
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Statistical Model Checking of NetLogo Models |
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Marco Pangallo, Daniele Giachini and Andrea Vandin |
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Keywords | |||||||||||||||||
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NetLogo, MultiVeStA, Transient analysis, Calibration, Warmup estimation, Steady-state analysis.
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JEL Classifications | |||||||||||||||||
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C15, C63, C87
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Abstract | |||||||||||||||||
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Agent-based models (ABMs) are gaining increasing traction in
several domains, due to their ability to represent complex systems
that are not easily expressible with classical mathematical
models. This expressivity and richness come at a cost: ABMs can
typically be analyzed only through simulation, making their analysis
challenging. Specifically, when studying the output of ABMs, the
analyst is often confronted with practical questions such as: (i) how
many independent replications should be run? (ii) how many initial
time steps should be discarded as a warm-up? (iii) after the warm-up,
how long should the model run? (iv) what are the right parameter
values? Analysts usually resort to rules of thumb and experimentation,
which lack statistical rigor. This is mainly because addressing these
points takes time, and analysts prefer to spend their limited time
improving the model. In this paper, we propose a methodology, drawing
on the field of Statistical Model Checking, to automate the process
and provide guarantees of statistical rigor for ABMs written in
NetLogo, one of the most popular ABM platforms. We discuss MultiVeStA,
a tool that dramatically reduces the time and human intervention
needed to run statistically rigorous checks on ABM outputs, and
introduce its integration with NetLogo. Using two ABMs from the
NetLogo library, we showcase MultiVeStA's analysis capabilities for
NetLogo ABMs, as well as a novel application to statistically rigorous
calibration. Our tool-chain makes it immediate to perform statistical
checks with NetLogo models, promoting more rigorous and reliable
analyses of ABM outputs.
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