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Provides meta-analysis methods that correct for publication bias and outcome reporting bias. Four methods and a visual tool are currently included in the package. The p-uniform method as described in van Assen, van Aert, and Wicherts (2015) <https:psycnet.apa.org/record/2014-48759-001> can be used for estimating the average effect size, testing the null hypothesis of no effect, and testing for publication bias using only the statistically significant effect sizes of primary studies. The second method in the package is the p-uniform* method as described in van Aert and van Assen (2019) <doi:10.31222/osf.io/zqjr9>. This method is an extension of the p-uniform method that allows for estimation of the average effect size and the between-study variance in a meta-analysis, and uses both the statistically significant and nonsignificant effect sizes. The third method in the package is the hybrid method as described in van Aert and van Assen (2017) <doi:10.3758/s13428-017-0967-6>. The hybrid method is a meta-analysis method for combining an original study and replication and while taking into account statistical significance of the original study. The p-uniform and hybrid method are based on the statistical theory that the distribution of p-values is uniform conditional on the population effect size. The fourth method in the package is the Snapshot Bayesian Hybrid Meta-Analysis Method as described in van Aert and van Assen (2018) <doi:10.1371/journal.pone.0175302>. This method computes posterior probabilities for four true effect sizes (no, small, medium, and large) based on an original study and replication while taking into account publication bias in the original study. The method can also be used for computing the required sample size of the replication akin to power analysis in null hypothesis significance testing. The meta-plot is a visual tool for meta-analysis that provides information on the primary studies in the meta-analysis, the results of the meta-analysis, and characteristics of the research on the effect under study (van Assen et al., 2021). Helper functions to apply the Correcting for Outcome Reporting Bias (CORB) method to correct for outcome reporting bias in a meta-analysis (van Aert & Wicherts, 2021).

copied from cf-staging / r-puniform
Type Size Name Uploaded Downloads Labels
conda 291.8 kB | win-64/r-puniform-0.2.5-r41ha856d6a_2.conda  1 year and 6 months ago 343 main
conda 285.4 kB | osx-64/r-puniform-0.2.5-r43he9b8800_2.conda  1 year and 6 months ago 149 main
conda 285.0 kB | osx-64/r-puniform-0.2.5-r42he9b8800_2.conda  1 year and 6 months ago 151 main
conda 288.9 kB | linux-64/r-puniform-0.2.5-r43h08d816e_2.conda  1 year and 6 months ago 1220 main
conda 288.3 kB | linux-64/r-puniform-0.2.5-r42h08d816e_2.conda  1 year and 6 months ago 1214 main
conda 316.7 kB | win-64/r-puniform-0.2.5-r41ha856d6a_1.tar.bz2  2 years and 2 months ago 541 main
conda 311.5 kB | osx-64/r-puniform-0.2.5-r42hf5e6a41_1.tar.bz2  2 years and 2 months ago 70 main
conda 312.1 kB | osx-64/r-puniform-0.2.5-r41hf5e6a41_1.tar.bz2  2 years and 2 months ago 69 main
conda 315.7 kB | linux-64/r-puniform-0.2.5-r42h9f5de39_1.tar.bz2  2 years and 2 months ago 1621 main
conda 315.6 kB | linux-64/r-puniform-0.2.5-r41h9f5de39_1.tar.bz2  2 years and 2 months ago 1609 main
conda 331.7 kB | win-64/r-puniform-0.2.5-r40ha856d6a_0.tar.bz2  2 years and 3 months ago 576 main
conda 316.9 kB | win-64/r-puniform-0.2.5-r41ha856d6a_0.tar.bz2  2 years and 3 months ago 571 main
conda 311.5 kB | osx-64/r-puniform-0.2.5-r40hf5e6a41_0.tar.bz2  2 years and 3 months ago 75 main
conda 311.5 kB | osx-64/r-puniform-0.2.5-r41hf5e6a41_0.tar.bz2  2 years and 3 months ago 71 main
conda 315.0 kB | linux-64/r-puniform-0.2.5-r40h9f5de39_0.tar.bz2  2 years and 3 months ago 1714 main
conda 315.2 kB | linux-64/r-puniform-0.2.5-r41h9f5de39_0.tar.bz2  2 years and 3 months ago 1672 main

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