In scientific research, many hypotheses relate to the comparison of two independent groups. Usually, it is of interest to use a design (i.e., the allocation of sample sizes $m$ and $n$ for fixed $N = m + n$) that maximizes the power of the applied statistical test. It is known that the two-sample t-tests for homogeneous and heterogeneous variances may lose substantial power when variances are unequal but equally large samples are used. We demonstrate that this is not the case for the non-parametric Wilcoxon-Mann-Whitney-test, whose application in biometrical research fields is motivated by two examples from cancer research. We prove the optimality of the design $m = n$ in case of symmetric and identically shaped distributions using normal a...
The parametric Welch t-test and the non-parametric Wilcoxon–Mann–Whitney, empirical and exponential ...
A very(sic) design in quantitative research involves the random allocation of a sample of N individu...
The adherence to classical parametric research methods continues, in part, because of the misconcept...
Experimental designs using two or more treatments frequently arise in many fields of study, from med...
Despite the theoretical correctness of the t-test in testing differences between two groups and the ...
A previous study indicated that the Wilcoxon W test showed a power advantage over the student’s t-te...
The Wilcoxon-Mann-Whitney test, as well as modern improvements, are based in part on an estimate of ...
The nonparametric Wilcoxon Rank Sum (also known as the Mann-Whitney U) and the permutation t-tests a...
Likert questionnaires are widely used in survey research, but it is unclear whether the item data sh...
This paper develops a unified framework for deriving optimal designs for hypothesis testing in the ...
The process of dichotomizing the possible conclusions of an experiment and using probability theory ...
Many statistical tests require that your data follow a normal distribution. Sometimes this is not th...
For two independent samples there is much debate in the literature whether parametric or non-paramet...
Investigating differences between means of more than two groups or experimental conditions is a rout...
The Wilcoxon-Mann-Witney test is extended to account for a second independent factor. The new test s...
The parametric Welch t-test and the non-parametric Wilcoxon–Mann–Whitney, empirical and exponential ...
A very(sic) design in quantitative research involves the random allocation of a sample of N individu...
The adherence to classical parametric research methods continues, in part, because of the misconcept...
Experimental designs using two or more treatments frequently arise in many fields of study, from med...
Despite the theoretical correctness of the t-test in testing differences between two groups and the ...
A previous study indicated that the Wilcoxon W test showed a power advantage over the student’s t-te...
The Wilcoxon-Mann-Whitney test, as well as modern improvements, are based in part on an estimate of ...
The nonparametric Wilcoxon Rank Sum (also known as the Mann-Whitney U) and the permutation t-tests a...
Likert questionnaires are widely used in survey research, but it is unclear whether the item data sh...
This paper develops a unified framework for deriving optimal designs for hypothesis testing in the ...
The process of dichotomizing the possible conclusions of an experiment and using probability theory ...
Many statistical tests require that your data follow a normal distribution. Sometimes this is not th...
For two independent samples there is much debate in the literature whether parametric or non-paramet...
Investigating differences between means of more than two groups or experimental conditions is a rout...
The Wilcoxon-Mann-Witney test is extended to account for a second independent factor. The new test s...
The parametric Welch t-test and the non-parametric Wilcoxon–Mann–Whitney, empirical and exponential ...
A very(sic) design in quantitative research involves the random allocation of a sample of N individu...
The adherence to classical parametric research methods continues, in part, because of the misconcept...