Bicher, M., Brunmeir, D., & Popper, N. (2024). Modeling of Agent Decisions Using Conditional Generative Adversarial Networks. In 2024 Winter Simulation Conference (WSC) (pp. 2643–2654). IEEE. https://doi.org/10.1109/WSC63780.2024.10838996
E194-04 - Forschungsbereich Data Science E105-06 - Forschungsbereich Computational Statistics
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Erschienen in:
2024 Winter Simulation Conference (WSC)
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ISBN:
979-8-3315-3420-2
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Datum (veröffentlicht):
2024
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Veranstaltungsname:
Winter Simulation Conference 2024
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Veranstaltungszeitraum:
15-Dez-2024 - 18-Dez-2024
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Veranstaltungsort:
Orlando, FL, Vereinigte Staaten von Amerika
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Umfang:
12
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Verlag:
IEEE, Piscataway
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Peer Reviewed:
Ja
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Keywords:
agent-based modelling; generative adversarial networks; agent decisions; random number sampling
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Abstract:
In this paper, we investigate the use of Generative Adversarial Networks (GAN) to model agent behavior in agent-based models. We hereby focus on use cases in which an agent’s decision-making process may only be modeled from data, but it is infeasible to be modeled causally. In these situations, meta-models are often the only way to quantitatively parameterize the agent-based model. However, methods that capture not only deterministic relationships but also stochastic uncertainty are rare. Since GANs are well known for their property to generate pseudo-random-numbers for complex distributions, we explore pros and cons of this strategy for modeling a delay-process in a large-scale agent-based SARS-CoV-2 simulation model.
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Projekttitel:
Pro-Active Routing for Emergency Testing in Pandemics: I 5908-G (FWF - Österr. Wissenschaftsfonds)
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Forschungsschwerpunkte:
Information Systems Engineering: 50% Modeling and Simulation: 50%