es_from_mean_change_se function

Convert mean changes and standard errors of two independent groups into standard effect size measures

Convert mean changes and standard errors of two independent groups into standard effect size measures

es_from_mean_change_se( mean_change_exp, mean_change_se_exp, mean_change_nexp, mean_change_se_nexp, r_pre_post_exp, r_pre_post_nexp, n_exp, n_nexp, smd_to_cor = "viechtbauer", reverse_mean_change )

Arguments

  • mean_change_exp: mean change of participants in the experimental/exposed group.
  • mean_change_se_exp: standard error of the mean change for participants in the experimental/exposed group.
  • mean_change_nexp: mean change of participants in the non-experimental/non-exposed group.
  • mean_change_se_nexp: standard error of the mean change for participants in the non-experimental/non-exposed group.
  • r_pre_post_exp: pre-post correlation in the experimental/exposed group
  • r_pre_post_nexp: pre-post correlation in the non-experimental/non-exposed group
  • n_exp: number of participants in the experimental/exposed group.
  • n_nexp: number of participants in the non-experimental/non-exposed group.
  • smd_to_cor: formula used to convert the cohen_d value into a coefficient correlation (see details).
  • reverse_mean_change: a logical value indicating whether the direction of generated effect sizes should be flipped.

Returns

This function estimates and converts between several effect size measures.

natural effect size measureMD + D + G
converted effect size measureOR + R + Z
required input dataSee 'Section 14. Paired: mean change, and dispersion'
https://metaconvert.org/input.html

Details

This function converts the mean change and standard errors of two independent groups into a Cohen's d. The Cohen's d is then converted to other effect size measures.

This function simply internally calls the es_from_means_se_pre_post function but setting:

mean_pre_exp=mean_change_exp mean\_pre\_exp = mean\_change\_exp mean_pre_se_exp=mean_change_se_exp mean\_pre\_se\_exp = mean\_change\_se\_exp mean_exp=0 mean\_exp = 0 mean_se_exp=0 mean\_se\_exp = 0 mean_pre_nexp=mean_change_nexp mean\_pre\_nexp = mean\_change\_nexp mean_pre_se_nexp=mean_change_se_nexp mean\_pre\_se\_nexp = mean\_change\_se\_nexp mean_nexp=0 mean\_nexp = 0 mean_se_nexp=0 mean\_se\_nexp = 0

To know more about the calculations, see es_from_means_se_pre_post function.

Examples

es_from_mean_change_se( n_exp = 36, n_nexp = 35, mean_change_exp = 8.4, mean_change_se_exp = 9.13, mean_change_nexp = 2.43, mean_change_se_nexp = 6.61, r_pre_post_exp = 0.2, r_pre_post_nexp = 0.2 )

References

Bonett, S. B. (2008). Estimating effect sizes from pretest-posttest-control group designs. Organizational Research Methods, 11(2), 364–386. https://doi.org/10.1177/1094428106291059

Cooper, H., Hedges, L.V., & Valentine, J.C. (Eds.). (2019). The handbook of research synthesis and meta-analysis. Russell Sage Foundation.

  • Maintainer: Corentin J. Gosling
  • License: GPL (>= 3)
  • Last published: 2024-11-17

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