Meta-analysis of correlation coefficients: a Monte Carlo comparison of fixed- and random-effects methods
- PMID: 11411440
- DOI: 10.1037/1082-989x.6.2.161
Meta-analysis of correlation coefficients: a Monte Carlo comparison of fixed- and random-effects methods
Abstract
The efficacy of the Hedges and colleagues, Rosenthal-Rubin, and Hunter-Schmidt methods for combining correlation coefficients was tested for cases in which population effect sizes were both fixed and variable. After a brief tutorial on these meta-analytic methods, the author presents two Monte Carlo simulations that compare these methods for cases in which the number of studies in the meta-analysis and the average sample size of studies were varied. In the fixed case the methods produced comparable estimates of the average effect size; however, the Hunter-Schmidt method failed to control the Type I error rate for the associated significance tests. In the variable case, for both the Hedges and colleagues and Hunter-Schmidt methods, Type I error rates were not controlled for meta-analyses including 15 or fewer studies and the probability of detecting small effects was less than .3. Some practical recommendations are made about the use of meta-analysis.
Comment in
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  Meta-analysis of correlations revisited: attempted replication and extension of Field's (2001) simulation studies.Psychol Methods. 2009 Mar;14(1):24-42. doi: 10.1037/a0014697. Psychol Methods. 2009. PMID: 19271846
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