In science, it is a common experience to discover that although the investigated effect is very clear in some individuals, statistical tests are not significant because the effect is null or even opposite in other individuals. Indeed, t-tests, Anovas and linear regressions compare the average effect with respect to its inter-individual variability, so that they can fail to evidence a factor that has a high effect in many individuals (with respect to the intra-individual variability). In such paradoxical situations, statistical tools are at odds with the researcher’s aim to uncover any factor that affects individual behavior, and not only those with stereotypical effects. In order to go beyond the reductive and sometimes illusory description...
In (A), sample size is calculated to detect the mean of the true effect sizes above the minimum of i...
It is commonly believed that if a two-way analysis of variance (ANOVA) is carried out in R, then rep...
Misinterpretation and abuse of statistical tests, confidence intervals, and statistical power have b...
In science, it is a common experience to discover that although the investigated effect is very clea...
<div><p>In science, it is a common experience to discover that although the investigated effect is v...
Research often necessitates of samples, yet obtaining large enough samples is not always possible. W...
After much exertion and care to run an experiment in social science, the analysis of data should not...
1. Quantifying individual heterogeneity in plasticity is becoming common in studies of evolutionary ...
Empirical Bayes (EB) estimates of the random effects in multilevel models represent how individuals ...
Degree awarded: Ph.D. Mathematics and Statistics. American UniversityThe objective of this research ...
Misinterpretation and abuse of statistical tests, confidence intervals, and statistical power have b...
Misinterpretation and abuse of statistical tests, confidence intervals, and statistical power have b...
When the editors of Basic and Applied Social Psychology effectively banned the use of null hypothesi...
Summary. A small literature discusses locally most powerful rank tests when only a fraction of treat...
Mixed-effect models are frequently used to control for the nonindependence of data points, for examp...
In (A), sample size is calculated to detect the mean of the true effect sizes above the minimum of i...
It is commonly believed that if a two-way analysis of variance (ANOVA) is carried out in R, then rep...
Misinterpretation and abuse of statistical tests, confidence intervals, and statistical power have b...
In science, it is a common experience to discover that although the investigated effect is very clea...
<div><p>In science, it is a common experience to discover that although the investigated effect is v...
Research often necessitates of samples, yet obtaining large enough samples is not always possible. W...
After much exertion and care to run an experiment in social science, the analysis of data should not...
1. Quantifying individual heterogeneity in plasticity is becoming common in studies of evolutionary ...
Empirical Bayes (EB) estimates of the random effects in multilevel models represent how individuals ...
Degree awarded: Ph.D. Mathematics and Statistics. American UniversityThe objective of this research ...
Misinterpretation and abuse of statistical tests, confidence intervals, and statistical power have b...
Misinterpretation and abuse of statistical tests, confidence intervals, and statistical power have b...
When the editors of Basic and Applied Social Psychology effectively banned the use of null hypothesi...
Summary. A small literature discusses locally most powerful rank tests when only a fraction of treat...
Mixed-effect models are frequently used to control for the nonindependence of data points, for examp...
In (A), sample size is calculated to detect the mean of the true effect sizes above the minimum of i...
It is commonly believed that if a two-way analysis of variance (ANOVA) is carried out in R, then rep...
Misinterpretation and abuse of statistical tests, confidence intervals, and statistical power have b...