Estimating beta-function selection models in meta-analysis with dependent effects
Martyna Citkowicz,
James E Pustejovsky and
Megha Joshi
No wjpxk_v1, MetaArXiv from Center for Open Science
Abstract:
Meta-analysts seek to draw generalizable inferences by pooling findings across available studies. Such efforts are hampered by selective reporting of study findings, which distorts meta-analytic inferences when statistically significant results are reported preferentially. Many techniques are available for investigating selective reporting in meta-analyses of independent effects, but psychological meta-analyses routinely involve dependent data structures, as arise when primary studies report results for multiple outcomes. Recent methodological developments that can accommodate dependent effects have focused on step-function selection models, in which the probability of reporting depends on whether a finding's p-value falls above or below pre-specified thresholds. We propose an alternative model in which the reporting probability follows a flexible, truncated beta function, avoiding the need to specify a priori thresholds. Estimation of the model accommodates dependent effect sizes using cluster-robust variance estimation or clustered bootstrapping. We demonstrate the proposed approach by re-analyzing a published meta-analysis. Through an extensive simulation study, we evaluate the performance of the truncated beta model versus standard meta-analytic methods and versus step-function models to assess robustness to selection function misspecification. Results show that the beta-density model yields negligible bias across diverse conditions and outperforms standard alternatives when selective reporting is present, although simpler step-function models can be more precise under mild selection. Clustered bootstrap confidence intervals provide superior coverage compared to cluster-robust variance estimation. Although conventional methods remain more precise when selection is absent, the truncated beta selection model serves as a useful tool for sensitivity analysis and estimation in larger dataset that include dependent effects.
Date: 2026-06-30
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Persistent link: https://EconPapers.repec.org/RePEc:osf:metaar:wjpxk_v1
DOI: 10.31219/osf.io/wjpxk_v1
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