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Methods in causal inference. Part 4: confounding in experiments

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posted on 2025-02-11, 03:10 authored by Joseph BulbuliaJoseph Bulbulia
Confounding bias arises when a treatment and outcome share a common cause. In randomised controlled experiments (trials), treatment assignment is random, ostensibly eliminating confounding bias. Here, we use causal directed acyclic graphs to unveil eight structural sources of bias that nevertheless persist in these trials. This analysis highlights the crucial role of causal inference methods in the design and analysis of experiments, ensuring the validity of conclusions drawn from experimental data.

History

Preferred citation

Bulbulia, J. A. (2024). Methods in causal inference. Part 4: confounding in experiments. Evolutionary Human Sciences, 6, e43-. https://doi.org/10.1017/ehs.2024.34

Journal title

Evolutionary Human Sciences

Volume

6

Publication date

2024-09-27

Pagination

e43

Publisher

Cambridge University Press (CUP)

Publication status

Published

Online publication date

2024-09-27

ISSN

2513-843X

eISSN

2513-843X

Article number

e43

Language

en