We join the important effort of embracing diverse views on causality in a prior Editor’s Comment (Mithas, et al. 2022a). Specifically, we aim to expand the discussion around a major causal framework and toolkit that, we believe, is largely missing and needed in empirical studies in the field of information systems (IS): that of causal diagrams and structural causal modeling (SCM). Being relatively new, the SCM framework has faced resistance from economists that has only recently begun to soften; and for this reason, remains largely absent in econometrics textbooks and in the curriculum of most PhD programs in IS. In contrast to viewpoints emphasizing the dichotomy between SCM and the econometrics or potential outcomes approaches, we explain how SCM can serve as a complementary layer of identification and communication that aligns with such proven design and analysis frameworks. We discuss current limitations of the SCM framework and opportunities for new research.
Causal Inference Grounded in Causal Diagrams: Benefits, Limitations, and Opportunities for the Information Systems Field
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18422
Publication History
Received: September 11, 2022
Revised: October 3, 2023; June 4, 2024
Accepted: August 18, 2024
Published as Forthcoming: October 2, 2024
Published as Articles in Advance: Forthcoming
Published in Issue: Forthcoming
Abstract
Additional Details
Author | Ali Tafti and Galit Shmueli |
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Keywords | Causality, causal diagrams, directed acyclic graph (DAG), econometrics, structural causal modeling (SCM) |
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