Correlated data frequently arise in contexts such as, for example, repeated measures and meta-analysis. The amount of information in such data depends not only on the sample size, but also on the structure and strength of the correlations among observations from the same independent block. A general concept is discussed, the effective sample size, as a way of quantifying the amount of information in such data. It is defined as the sample size one would need in an independent sample to equal the amount of information in the actual correlated sample. This concept is widely applicable, for Gaussian data and beyond, and provides important insight. For example, it helps explain why fixed-effects and random-effects inferences of meta-analytic dat...
The procedure suggested by DerSimonian and Laird is the simplest and most commonly used method for f...
It is well known that dichotomizing continuous data has the effect to decrease statistical power whe...
Effect size information is essential for the scientific enterprise and plays an increasingly central...
Correlated data frequently arise in contexts such as, for example, repeated measures and meta-analys...
Tests for experiments with matched groups or repeated measures designs use error terms that involve ...
The efficacy of the Hedges and colleagues, Rosenthal-Rubin, and Hunter-Schmidt methods for combining...
ABSTRACT. Approximations to the distribution of a common form of effect size are presented. Single s...
This study examined the statistical consequences of employing various methods of computing and cumul...
Missing effect-size estimates pose a particularly difficult problem in meta-analysis. Rather than di...
One conceptualization of meta-analysis is that studies within the meta-analysis are sampled from pop...
Objective: Reshef & Reshef recently published a paper in which they present a method called the ...
In this article we present a general set of meta-analytic procedures for combining and comparing res...
Calculations of the power of statistical tests are important in planning research studies (including...
In this study we address the problem of using effective sample size (ESS) to approximate the probabi...
Missing effect-size estimates pose a particularly difficult problem in meta-analysis. Rather than di...
The procedure suggested by DerSimonian and Laird is the simplest and most commonly used method for f...
It is well known that dichotomizing continuous data has the effect to decrease statistical power whe...
Effect size information is essential for the scientific enterprise and plays an increasingly central...
Correlated data frequently arise in contexts such as, for example, repeated measures and meta-analys...
Tests for experiments with matched groups or repeated measures designs use error terms that involve ...
The efficacy of the Hedges and colleagues, Rosenthal-Rubin, and Hunter-Schmidt methods for combining...
ABSTRACT. Approximations to the distribution of a common form of effect size are presented. Single s...
This study examined the statistical consequences of employing various methods of computing and cumul...
Missing effect-size estimates pose a particularly difficult problem in meta-analysis. Rather than di...
One conceptualization of meta-analysis is that studies within the meta-analysis are sampled from pop...
Objective: Reshef & Reshef recently published a paper in which they present a method called the ...
In this article we present a general set of meta-analytic procedures for combining and comparing res...
Calculations of the power of statistical tests are important in planning research studies (including...
In this study we address the problem of using effective sample size (ESS) to approximate the probabi...
Missing effect-size estimates pose a particularly difficult problem in meta-analysis. Rather than di...
The procedure suggested by DerSimonian and Laird is the simplest and most commonly used method for f...
It is well known that dichotomizing continuous data has the effect to decrease statistical power whe...
Effect size information is essential for the scientific enterprise and plays an increasingly central...