In the social and behavioral sciences, it is recommended that effect sizes and their sampling variances be reported. Formulas for common effect sizes such as standardized and raw mean differences, correlation coefficients, and odds ratios are well known and have been well studied. However, the statistical properties of multivariate effect sizes have received less attention in the literature. This study shows how structural equation modeling (SEM) can be used to compute multivariate effect sizes and their sampling covariance matrices. We focus on the standardized mean difference (multiple-treatment and multiple-endpoint studies) with or without the assumption of the homogeneity of variances (or covariance matrices) in this study. Empirical e...
Multivariate meta-analytic regression (MMR) is the recommended approach for conducting fixed effects...
Two different approaches have been used to derive measures of effect size. One approach is based on ...
Multilevel modeling techniques are becoming more popular in handling data with multilevel structure ...
In the social and behavioral sciences, it is recommended that effect sizes and their sampling varian...
In the social and behavioral sciences, it is recommended that effect sizes and their sampling varian...
In the social and behavioral sciences, it is recommended that effect sizes and their sampling varian...
In the social and behavioral sciences, it is recommended that effect sizes and their sampling varian...
Current statistical methods for estimation of parametric effect sizes from a series of experiments a...
Survey data in social, behavioral, and health sciences often contain many variables (p). Structural ...
"Noted for its comprehensive coverage, this greatly expanded new edition now covers the use of univa...
This article illustrates the use of structural equation modeling (SEM) procedures with latent variab...
The coefficient of variation (CV) measures variability relative to the mean, and can be useful when ...
A Monte Carlo simulation study was conducted to investigate the effects of sample size, estimation m...
When two or more univariate population means are compared, the proportion of variation in the depend...
Although dissatisfaction with the limitations associated with tests for statistical significance has...
Multivariate meta-analytic regression (MMR) is the recommended approach for conducting fixed effects...
Two different approaches have been used to derive measures of effect size. One approach is based on ...
Multilevel modeling techniques are becoming more popular in handling data with multilevel structure ...
In the social and behavioral sciences, it is recommended that effect sizes and their sampling varian...
In the social and behavioral sciences, it is recommended that effect sizes and their sampling varian...
In the social and behavioral sciences, it is recommended that effect sizes and their sampling varian...
In the social and behavioral sciences, it is recommended that effect sizes and their sampling varian...
Current statistical methods for estimation of parametric effect sizes from a series of experiments a...
Survey data in social, behavioral, and health sciences often contain many variables (p). Structural ...
"Noted for its comprehensive coverage, this greatly expanded new edition now covers the use of univa...
This article illustrates the use of structural equation modeling (SEM) procedures with latent variab...
The coefficient of variation (CV) measures variability relative to the mean, and can be useful when ...
A Monte Carlo simulation study was conducted to investigate the effects of sample size, estimation m...
When two or more univariate population means are compared, the proportion of variation in the depend...
Although dissatisfaction with the limitations associated with tests for statistical significance has...
Multivariate meta-analytic regression (MMR) is the recommended approach for conducting fixed effects...
Two different approaches have been used to derive measures of effect size. One approach is based on ...
Multilevel modeling techniques are becoming more popular in handling data with multilevel structure ...