The present study investigates the performance of Johnson's transformation trimmed t statistic, Welch's t test, Yuen's trimmed t , Johnson's transformation untrimmed t test, and the corresponding bootstrap methods for the two-sample case with small/unequal sample sizes when the distribution is non-normal and variances are heterogeneous. The Monte Carlo simulation is conducted in two-sided as well as one-sided tests. When the variance is proportional to the sample size, Yuen's trimmed t is as good as Johnson's transformation trimmed t . However, when the variance is disproportional to the sample size, the bootstrap Yuen's trimmed t and the bootstrap Johnson's transformation trimmed t are recommended in one-sided tests. For two-sided tests, J...
The comparison of two samples is a problem very frequently encountered in practice. There is active ...
Researchers can adopt different measures of central tendency and test statistics to examine the effe...
Yu en'st wo-sample trimmed mean test statistic is one of the most robust methods to apply when ...
The present study investigates the performance of Johnson's transformation trimmed t statistic, Welc...
When the assumptions of normality and homoscedasticity are met, researchers should have no doubt in ...
The present study suggests the use of the normalized Johnson transformation trimmed t statistic in t...
To deal with the problem of non-normality and heteroscedasticity, the current study proposes applyin...
In this study, two methods of comparing the means of two samples were conducted.The first method use...
The classical procedures of comparing two groups, such as t-test are, usually restricted with the as...
The classical procedures of comparing two groups, such as t-test are, usually restricted with the as...
In this study, two methods of comparing the means of two samples were conducted. The first method us...
When the assumptions of normality and homoscedasticity are met, researchers should have no doubt in ...
The classical procedures of comparing two groups, such as t-test are, usually restricted with the as...
For testing the homogeneity of variances, modifications of well-known tests are known which combine ...
The comparison of two samples is a problem very frequently encountered in practice. There is active ...
The comparison of two samples is a problem very frequently encountered in practice. There is active ...
Researchers can adopt different measures of central tendency and test statistics to examine the effe...
Yu en'st wo-sample trimmed mean test statistic is one of the most robust methods to apply when ...
The present study investigates the performance of Johnson's transformation trimmed t statistic, Welc...
When the assumptions of normality and homoscedasticity are met, researchers should have no doubt in ...
The present study suggests the use of the normalized Johnson transformation trimmed t statistic in t...
To deal with the problem of non-normality and heteroscedasticity, the current study proposes applyin...
In this study, two methods of comparing the means of two samples were conducted.The first method use...
The classical procedures of comparing two groups, such as t-test are, usually restricted with the as...
The classical procedures of comparing two groups, such as t-test are, usually restricted with the as...
In this study, two methods of comparing the means of two samples were conducted. The first method us...
When the assumptions of normality and homoscedasticity are met, researchers should have no doubt in ...
The classical procedures of comparing two groups, such as t-test are, usually restricted with the as...
For testing the homogeneity of variances, modifications of well-known tests are known which combine ...
The comparison of two samples is a problem very frequently encountered in practice. There is active ...
The comparison of two samples is a problem very frequently encountered in practice. There is active ...
Researchers can adopt different measures of central tendency and test statistics to examine the effe...
Yu en'st wo-sample trimmed mean test statistic is one of the most robust methods to apply when ...