A meso-level empirical validation approach for agent-based computational economic models drawing on micro-data: a use case with a mobility mode-choice model
Version
Published
Date Issued
2021-05-12
Author(s)
Type
Article
Language
English
Abstract
The complex nature of agent-based modeling may reveal more descriptive accuracy than analytical tractability. That leads to an additional layer of methodological issues regarding empirical validation, which is an ongoing challenge. This paper offers a replicable method to empirically validate agent-based models, a specific indicator of “goodness-of-validation” and its statistical distribution, leading to a statistical test in some way comparable to the p value. The method involves an unsupervised machine learning algorithm hinging on cluster analysis. It clusters the ex-post behavior of real and artificial individuals to create meso-level behavioral patterns. By comparing the balanced composition of real and artificial agents among clusters, it produces a validation score in [0, 1] which can be judged thanks to its statistical distribution. In synthesis, it is argued that an agent-based model can be initialized at the micro-level, calibrated at the macro-level, and validated at the meso-level with the same data set. As a case study, we build and use a mobility mode-choice model by configuring an agent-based simulation platform called BedDeM. We cluster the choice behavior of real and artificial individuals with the same ex-ante given characteristics. We analyze these clusters’ similarity to understand whether the model-generated data contain observationally equivalent behavioral patterns as the real data. The model is validated with a specific score of 0.27, which is better than about 95% of all possible scores that the indicator can produce. By drawing lessons from this example, we provide advice for researchers to validate their models if they have access to micro-data.
Subjects
HB Economic Theory
HE Transportation and Communications
QA75 Electronic computers. Computer science
Publisher DOI
Journal
Springer Nature Business & Economics
Publisher URL
Sponsors
This research is part of the activities of SCCER CREST, which is financially supported by the Swiss Innovation Agency (Innosuisse).
Volume
1
Issue
6
Publisher
Springer Nature
Submitter
BektasA
Citation apa
Bektas, A., Piana, V., & Schumann, R. (2021). A meso-level empirical validation approach for agent-based computational economic models drawing on micro-data: a use case with a mobility mode-choice model. In Springer Nature Business & Economics (Vol. 1, Issue 6). Springer Nature. https://doi.org/10.24451/arbor.14876
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