Sensemaking of causality in agent-based models
Peer reviewed, Journal article
Published version
View/ Open
Date
2022Metadata
Show full item recordCollections
Original version
International Journal of Social Research Methodology: Theory and Practice. 2022, 1-12. 10.1080/13645579.2022.2049510Abstract
Even though agent-based modelling is seen as committing to a mechanistic, generative type of causation, the methodology allows for representing many other types of causal explanations. Agent-based models are capable of integrating diverse causal relationships into coherent causal mechanisms. They mirror the crucial, multi-level component of emergent phenomena and recognize the important role of single-level causes without limiting the scope of the offered explana- tion. Implementing various types of causal relationships to complement the generative causation offers insight into how a multi-level phenomenon happens and allows for building more complete causal explanations. The capacity to work with multiple approaches to causality is crucial when tackling the complex problems of the modern world.