Beyond Corroboration: Strengthening Model Validation by Looking for Unexpected Patterns
Authored by Romain Reuillon, Clementine Cottineau, Guillaume Cherel
Date Published: 2015
DOI: 10.1371/journal.pone.0138212
Sponsors:
European Research Council (ERC)
Platforms:
OpenMOLE
Model Documentation:
ODD
Mathematical description
Model Code URLs:
https://github.com/guillaumecherel/PSEExperiments
Abstract
Models of emergent phenomena are designed to provide an explanation to
global-scale phenomena from local-scale processes. Model validation is
commonly done by verifying that the model is able to reproduce the
patterns to be explained. We argue that robust validation must not only
be based on corroboration, but also on attempting to falsify the model, i.e. making sure that the model behaves soundly for any reasonable input
and parameter values. We propose an open-ended evolutionary method based
on Novelty Search to look for the diverse patterns a model can produce.
The Pattern Space Exploration method was tested on a model of collective
motion and compared to three common a priori sampling experiment
designs. The method successfully discovered all known qualitatively
different kinds of collective motion, and performed much better than the
a priori sampling methods. The method was then applied to a case study
of city system dynamics to explore the model's predicted values of city
hierarchisation and population growth. This case study showed that the
method can provide insights on potential predictive scenarios as well as
falsifiers of the model when the simulated dynamics are highly
unrealistic.
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