To deal with the problem of non-normality and heteroscedasticity, the current study proposes applying approximate transformation trimmed mean methods to the test of simple linear regression slope equality. The distribution-free slope estimates are first trimmed on both sides and then the test statistic t is transformed by Johnson's method for each group to correct non-normality. Lastly, an approximate test such as the James second-order test, the Welch test, or the DeShon-Alexander test, which are robust for heterogeneous variances, is applied to test the equality of regression slopes. Bootstrap methods and Monte Carlo simulation results show that the proposed methods provide protection against both unusual y values, as well as unusual x va...
In this study, we explore the effects of non-normality and heteroscedasticity when testing the hypot...
Researchers can adopt one of many different measures of central tendency and test statistics to exam...
Summary. Heteroscedastic data arise in many applications. In heteroscedas-tic regression analysis, t...
The robustness and power of nine strategies for testing the differences between two groups ’ regress...
The present study investigates the performance of Johnson's transformation trimmed t statistic, Welc...
The present study investigates the performance of Johnson's transformation trimmed t statistic, Welc...
In this study, we explore the effects of non-normality and heteroscedasticity when testing the hypot...
When the assumptions of normality and homoscedasticity are met, researchers should have no doubt in ...
The robustness and power of nine strategies for testing the differences between two groups’ regressi...
Ft statistic test is a non classical method of comparing two or more groups.This statistical procedu...
When the assumptions of normality and homoscedasticity are met, researchers should have no doubt in ...
t-test is a classical test statistics for testing the equality of two groups. However, this test is ...
The ANOVA-F test is the most popular and commonly used procedure for comparing J independent groups....
The ANOVA-F test is the most popular and commonly used procedure for comparing J independent groups....
Nonnormality and variance heterogeneity affect the validity of the traditional tests for treatment g...
In this study, we explore the effects of non-normality and heteroscedasticity when testing the hypot...
Researchers can adopt one of many different measures of central tendency and test statistics to exam...
Summary. Heteroscedastic data arise in many applications. In heteroscedas-tic regression analysis, t...
The robustness and power of nine strategies for testing the differences between two groups ’ regress...
The present study investigates the performance of Johnson's transformation trimmed t statistic, Welc...
The present study investigates the performance of Johnson's transformation trimmed t statistic, Welc...
In this study, we explore the effects of non-normality and heteroscedasticity when testing the hypot...
When the assumptions of normality and homoscedasticity are met, researchers should have no doubt in ...
The robustness and power of nine strategies for testing the differences between two groups’ regressi...
Ft statistic test is a non classical method of comparing two or more groups.This statistical procedu...
When the assumptions of normality and homoscedasticity are met, researchers should have no doubt in ...
t-test is a classical test statistics for testing the equality of two groups. However, this test is ...
The ANOVA-F test is the most popular and commonly used procedure for comparing J independent groups....
The ANOVA-F test is the most popular and commonly used procedure for comparing J independent groups....
Nonnormality and variance heterogeneity affect the validity of the traditional tests for treatment g...
In this study, we explore the effects of non-normality and heteroscedasticity when testing the hypot...
Researchers can adopt one of many different measures of central tendency and test statistics to exam...
Summary. Heteroscedastic data arise in many applications. In heteroscedas-tic regression analysis, t...