This study investigated how population parameters representing heterogeneity of variance, skewness, kurtosis, bimodality, and outlier-proneness, drawn from normal and eleven non-normal distributions, also characterized the ranks corresponding to independent samples of scores. When the parameters of population distributions from which samples were drawn were different, the ranks corresponding to the same pairs of samples of scores inherited similar differences. This finding explains some known results concerning Type I error probabilities and the relative power of parametric and nonparametric tests for various non-normal densities
Abstract: The major objective of this study was to investigate the effects of non-normality on Type ...
This article obtains a general formula to find the correlation coefficient between the sample mean a...
The coefficient of variation is commonly used in medical and biological sciences. In this paper, sev...
It is well known that the two-sample Student t test fails to maintain its
 significance level wh...
AbstractCorrelation coefficients have many applications for studying the relationship among multivar...
Some continuous quantitative traits such as yield are not always normally distributed. This article ...
Several nonparametric tests based on ranks have been proposed to handle analysis of variance problem...
In this journal, Zimmerman (2004, 2011) has discussed preliminary tests that researchers often use t...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/147087/1/rssc01350.pd
Not AvailableVery rarely, realized selection responses agree with those expected. One of the causes ...
Consider n variates drawn from n normal populations with the same variance for which an independent ...
In this paper, some of the familiar transformations of r are examined for their robustness to nonnor...
summary:The equivalence of the symmetry of density of the distribution of observations and the oddne...
Uniform random numbers were generated and transformed into four different sampling distributions: no...
A simulation study was conducted to investigate the performance of variance statistics for testing d...
Abstract: The major objective of this study was to investigate the effects of non-normality on Type ...
This article obtains a general formula to find the correlation coefficient between the sample mean a...
The coefficient of variation is commonly used in medical and biological sciences. In this paper, sev...
It is well known that the two-sample Student t test fails to maintain its
 significance level wh...
AbstractCorrelation coefficients have many applications for studying the relationship among multivar...
Some continuous quantitative traits such as yield are not always normally distributed. This article ...
Several nonparametric tests based on ranks have been proposed to handle analysis of variance problem...
In this journal, Zimmerman (2004, 2011) has discussed preliminary tests that researchers often use t...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/147087/1/rssc01350.pd
Not AvailableVery rarely, realized selection responses agree with those expected. One of the causes ...
Consider n variates drawn from n normal populations with the same variance for which an independent ...
In this paper, some of the familiar transformations of r are examined for their robustness to nonnor...
summary:The equivalence of the symmetry of density of the distribution of observations and the oddne...
Uniform random numbers were generated and transformed into four different sampling distributions: no...
A simulation study was conducted to investigate the performance of variance statistics for testing d...
Abstract: The major objective of this study was to investigate the effects of non-normality on Type ...
This article obtains a general formula to find the correlation coefficient between the sample mean a...
The coefficient of variation is commonly used in medical and biological sciences. In this paper, sev...