Geometry of behavioral spaces: A computational approach to analysis and understanding of agent based models and agent behaviors
Authored by Martin Cenek, Spencer K Dahl
Date Published: 2016
DOI: 10.1063/1.4965982
Sponsors:
United States National Science Foundation (NSF)
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
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Abstract
Systems with non-linear dynamics frequently exhibit emergent system
behavior, which is important to find and specify rigorously to
understand the nature of the modeled phenomena. Through this analysis, it is possible to characterize phenomena such as how systems assemble or
dissipate and what behaviors lead to specific final system
configurations. Agent Based Modeling (ABM) is one of the modeling
techniques used to study the interaction dynamics between a system's
agents and its environment. Although the methodology of ABM construction
is well understood and practiced, there are no computational, statistically rigorous, comprehensive tools to evaluate an ABM's
execution. Often, a human has to observe an ABM's execution in order to
analyze how the ABM functions, identify the emergent processes in the
agent's behavior, or study a parameter's effect on the system-wide
behavior. This paper introduces a new statistically based framework to
automatically analyze agents' behavior, identify common system-wide
patterns, and record the probability of agents changing their behavior
from one pattern of behavior to another. We use network based techniques
to analyze the landscape of common behaviors in an ABM's execution.
Finally, we test the proposed framework with a series of experiments
featuring increasingly emergent behavior. The proposed framework will
allow computational comparison of ABM executions, exploration of a
model's parameter configuration space, and identification of the
behavioral building blocks in a model's dynamics. (C) 2016 Author(s).
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