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Causal inference in misinformation and conspiracy research

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Forthcoming

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Causal inference in misinformation and conspiracy research. / Tay, Li; Hurlstone, Mark; Jiang, Yangxueqing et al.
In: Advances in Psychology, 13.08.2024.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Tay, L, Hurlstone, M, Jiang, Y, Platow, M, Kurz, T & Ecker, U 2024, 'Causal inference in misinformation and conspiracy research', Advances in Psychology.

APA

Tay, L., Hurlstone, M., Jiang, Y., Platow, M., Kurz, T., & Ecker, U. (in press). Causal inference in misinformation and conspiracy research. Advances in Psychology.

Vancouver

Tay L, Hurlstone M, Jiang Y, Platow M, Kurz T, Ecker U. Causal inference in misinformation and conspiracy research. Advances in Psychology. 2024 Aug 13.

Author

Tay, Li ; Hurlstone, Mark ; Jiang, Yangxueqing et al. / Causal inference in misinformation and conspiracy research. In: Advances in Psychology. 2024.

Bibtex

@article{5375114c39af4a6b8c01c1d729238c60,
title = "Causal inference in misinformation and conspiracy research",
abstract = "Psychological research has provided important insights into the processing of misinformation and conspiracy theories. Traditionally, this research has focused on randomized laboratory experiments and observational (non-experimental) studies seeking to establish causality via third-variable adjustment. However, laboratory experiments will always be constrained by feasibility and ethical considerations, and observational studies can often lead to unjustified causal conclusions or confused analysis goals. We argue that research in this field could therefore benefit from clearer thinking about causality and an expanded methodological toolset that includes natural experiments. Using both real and hypothetical examples, we offer an accessible introduction to the counterfactual framework of causality and highlight the potential of instrumental variable analysis, regression discontinuity design, difference-in-differences, and synthetic control for drawing causal inferences. We hope that such an approach to causality will contribute to greater integration amongst the various misinformation- and conspiracy- adjacent disciplines, thereby leading to more complete theories and better applied interventions.",
author = "Li Tay and Mark Hurlstone and Yangxueqing Jiang and Michael Platow and Tim Kurz and Ullrich Ecker",
year = "2024",
month = aug,
day = "13",
language = "English",
journal = "Advances in Psychology",
issn = "0166-4115",
publisher = "Elsevier",

}

RIS

TY - JOUR

T1 - Causal inference in misinformation and conspiracy research

AU - Tay, Li

AU - Hurlstone, Mark

AU - Jiang, Yangxueqing

AU - Platow, Michael

AU - Kurz, Tim

AU - Ecker, Ullrich

PY - 2024/8/13

Y1 - 2024/8/13

N2 - Psychological research has provided important insights into the processing of misinformation and conspiracy theories. Traditionally, this research has focused on randomized laboratory experiments and observational (non-experimental) studies seeking to establish causality via third-variable adjustment. However, laboratory experiments will always be constrained by feasibility and ethical considerations, and observational studies can often lead to unjustified causal conclusions or confused analysis goals. We argue that research in this field could therefore benefit from clearer thinking about causality and an expanded methodological toolset that includes natural experiments. Using both real and hypothetical examples, we offer an accessible introduction to the counterfactual framework of causality and highlight the potential of instrumental variable analysis, regression discontinuity design, difference-in-differences, and synthetic control for drawing causal inferences. We hope that such an approach to causality will contribute to greater integration amongst the various misinformation- and conspiracy- adjacent disciplines, thereby leading to more complete theories and better applied interventions.

AB - Psychological research has provided important insights into the processing of misinformation and conspiracy theories. Traditionally, this research has focused on randomized laboratory experiments and observational (non-experimental) studies seeking to establish causality via third-variable adjustment. However, laboratory experiments will always be constrained by feasibility and ethical considerations, and observational studies can often lead to unjustified causal conclusions or confused analysis goals. We argue that research in this field could therefore benefit from clearer thinking about causality and an expanded methodological toolset that includes natural experiments. Using both real and hypothetical examples, we offer an accessible introduction to the counterfactual framework of causality and highlight the potential of instrumental variable analysis, regression discontinuity design, difference-in-differences, and synthetic control for drawing causal inferences. We hope that such an approach to causality will contribute to greater integration amongst the various misinformation- and conspiracy- adjacent disciplines, thereby leading to more complete theories and better applied interventions.

M3 - Journal article

JO - Advances in Psychology

JF - Advances in Psychology

SN - 0166-4115

ER -