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  4. 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
 

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

URI
https://arbor.bfh.ch/handle/arbor/42708
Version
Published
Date Issued
2021-05-12
Author(s)
Bektas, Alperen  
Piana, Valentino
Schumann, René
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
DOI
10.24451/arbor.14876
https://doi.org/10.24451/arbor.14876
Publisher DOI
10.1007/s43546-021-00083-4
Journal
Springer Nature Business & Economics
Publisher URL
https://doi.org/10.1007/s43546-021-00083-4
Organization
Institut Public Sector Transformation (IPST)  
Data and Infrastructure  
Wirtschaft  
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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