Team-science projects have become the “gold standard” for assessing the replicability and variability of key findings in psychological science. However, we believe the typical meta-analytic approach in these projects fails to match the wealth of collected data. Instead, we advocate the use of Bayesian hierarchical modeling for team-science projects, potentially extended in a multiverse analysis. We illustrate this full-scale analysis by applying it to the recently published Many Labs 4 project. This project aimed to replicate the mortality-salience effect—that being reminded of one’s own death strengthens the own cultural identity. In a multiverse analysis, we assess the robustness of the results with varying data-inclusion criteria and prior settings. Bayesian model comparison results largely converge to a common conclusion: The data provide evidence against a mortality-salience effect across the majority of our analyses. We issue general recommendations to facilitate full-scale analyses in team-science projects.
CITATION STYLE
Hoogeveen, S., Berkhout, S. W., Gronau, Q. F., Wagenmakers, E. J., & Haaf, J. M. (2023). Improving Statistical Analysis in Team Science: The Case of a Bayesian Multiverse of Many Labs 4. Advances in Methods and Practices in Psychological Science, 6(3). https://doi.org/10.1177/25152459231182318
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