Published September 19, 2024 | Version v1
Poster Open

Utilising structural causal models to improve the study of science

Description

Causal inference is essential in science studies, yet many publications lack methods to substantiate causal claims. Structural causal models, often represented graphically with directed acyclic graphs, make causal assumptions transparent and improve communication. We illustrate the application with a hypothetical model of Open Science.

Files

STI 2024 - Utilising structural causal models to improve the study of science.pdf

Additional details

Related works

Describes
Preprint: 10.31235/osf.io/4bw9e (DOI)

Funding

PathOS – Open Science Impact Pathways 101058728
European Commission