inst/help/WaapWls.md

WAAP-WLS

WAAP-WLS is a meta-analytic method based on weighted least squares. Instead of the classical (random or fixed) meta-analyses that assume additive heterogeneity, WAAP-WLS assumes multiplicative heterogeneity. Furthermore, WAAP incorporates adjustments of selection processes. See Carter et al. (2019) for an overview of the methods. - WLS is the default meta-analytic model that assumes multiplicative heterogeneity (Stanley & Doucouliagos, 2017). - WAAP adjusts for selection processes by using only high-powered studies -- a WLS model fitted only with studies that would have at least 80% power to detect the WLS meta-analytic effect size estimate based on all studies (Ioannidis, Stanley, & Doucouliagos, 2017; Stanley et al., 2017).

WAAP-WLS is usually used as conditional estimator. WAAP is used if there are enough (at least 3) highly powered studies, otherwise WLS is used (Ioannidis, Stanley, & Doucouliagos, 2017; Stanley et al., 2017).

Input

Input type

Data

Inference

Mean Estimates

Summarizes the mean effect size estimates.

Multiplicative Heterogeneity Estimates

Summarizes the multiplicative heterogeneity estimates.

Plots

Mean model estimates

Visualizes mean effect size estimates from all fitted models.

References

R-packages

The implementation is based on the supplementary materials of Carter et al., (2019).



jasp-stats/jaspMetaAnalysis documentation built on April 5, 2025, 4:03 p.m.