Abstract
AbstractHow often do articles depend on suppression effects for their findings? How often do they disclose this fact? By suppression effects, we mean control-variable-induced increases in estimated effect sizes. Researchers generally scrutinize suppression effects as they want reassurance that authors have a strong explanation for them, especially when the statistical significance of the key finding depends on them. In a reanalysis of observational studies from a leading journal, we find that over 30% of articles depend on suppression effects for statistical significance. Although increases in key effect estimates from including control variables are of course potentially justifiable, none of the articles justify or disclose them. These findings may point to a hole in the review process: journals are accepting articles that depend on suppression effects without readers, reviewers, or editors being made aware.
Publisher
Cambridge University Press (CUP)
Subject
Political Science and International Relations,Sociology and Political Science
Reference48 articles.
1. Lenz, G. S. , and Sahn, A. . 2020. “Replication Data for: Achieving Statistical Significance with Control Variables and Without Transparency.” https://doi.org/10.7910/DVN/XIEJCR, Harvard Dataverse, V1, UNF:6:X6QRQK+3UeiBgJMBj8re2g== [fileUNF].
2. Reshaping Institutions: Evidence on Aid Impacts Using a Preanalysis Plan*
3. Bayesian Model Averaging: Theoretical Developments and Practical Applications
4. The Role of Predictor Variables Which are Independent of the Criterion;Horst;Social Science Research Council,1941
5. Illustrating bias due to conditioning on a collider
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