Small sample adjustments for robust variance estimation with meta-regression.
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Abstract
Although primary studies often report multiple outcomes, the covariances between these outcomes are rarely reported. This leads to difficulties when combining studies in a meta-analysis. This problem was recently addressed with the introduction of robust variance estimation. This new method enables the estimation of meta-regression models with dependent effect sizes, even when the dependence structure is unknown. Although robust variance estimation has been shown to perform well when the number of studies in the meta-analysis is large, previous simulation studies suggest that the associated tests often have Type I error rates that are much larger than nominal. In this article, I introduce 6 estimators with…
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Topics
Keywords
- Estimator
- Statistics
- Variance (accounting)
- Degrees of freedom (physics and chemistry)
- Sample size determination
- Covariate
- Robust statistics
- Regression analysis
UN Sustainable Development Goals
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