Exploring Social Theory Integration in Agent-Based Modelling Using Multi-Objective Grammatical Evolution
Abstract
In Generative Social Science, modellers design agents at the micro-level to generate macro-level a target social phenomenon. In the Inverse Generative Social Science (iGSS), from a target phenomenon, the goal is to search for possible explanatory model structures. This model discovery process is a promising tool to improve the explanatory capability and theory exploration of computational social science. This paper presents a framework for iGSS and applies Grammatical Evolution to an empirically-calibrated agent-based model of alcohol use. Results of the model discovery process find many alternative rules for agent behaviours with different trade-offs. Future work should involve domain experts to evaluate the discovered structures in terms of theoretical credibility and knowledge contribution.
Cite
Text
Vu et al. "Exploring Social Theory Integration in Agent-Based Modelling Using Multi-Objective Grammatical Evolution." ICML 2022 Workshops: AI4ABM, 2022.Markdown
[Vu et al. "Exploring Social Theory Integration in Agent-Based Modelling Using Multi-Objective Grammatical Evolution." ICML 2022 Workshops: AI4ABM, 2022.](https://mlanthology.org/icmlw/2022/vu2022icmlw-exploring/)BibTeX
@inproceedings{vu2022icmlw-exploring,
title = {{Exploring Social Theory Integration in Agent-Based Modelling Using Multi-Objective Grammatical Evolution}},
author = {Vu, Tuong Manh and Buckley, Charlotte and Duro, Joao A. and Purshouse, Robin C.},
booktitle = {ICML 2022 Workshops: AI4ABM},
year = {2022},
url = {https://mlanthology.org/icmlw/2022/vu2022icmlw-exploring/}
}