Standard least squares analysis of variance methods suffer from poor power under arbitrarily small departures from normality and fail to control the probability of a Type I error when standard assumptions are violated. This article describes a framework for robust estimation and testing that uses trimmed means with an approximate degrees of freedom heteroscedastic statistic for independent and correlated groups designs in order to achieve robustness to the biasing effects of nonnormality and variance heterogeneity. The authors describe a nonpara-metric bootstrap methodology that can provide improved Type I error control. In addition, the authors indicate how researchers can set robust confidence intervals around a robust effect size paramet...
The effects of nonnormality and heteroscedasticity on the T1 and trimmed F (Ft) test statistics were...
The study describes the various alternatives to the between-subjects ANOVA F test that have been per...
Seven test statistics known to be robust to the combined effects of nonnormality and variance hetero...
Standard least squares analysis of variance methods suffer from poor power under arbitrarily small d...
Confidence intervals must be robust in having nominal and actual probability coverage in close agree...
When the assumptions of normality and homoscedasticity are met, researchers should have no doubt in ...
Researchers can adopt one of many different measures of central tendency and test statistics to exam...
Robustness of power of the analysis of variance technique to the departures from the underlying assu...
Numerous authors suggest that the data gathered by investigators are not normal in shape. Accordingl...
Heteroscedastic consistent covariance matrix (HCCM) estimators provide ways for testing hypotheses a...
We study the properties of heteroskedasticity-robust confidence intervals for regression parameters....
Seven test statistics known to be robust to the combined effects of nonnormality and variance hetero...
This dissertation is composed of a study of estimation methods in classical and test theories and th...
When the assumptions of normality and homoscedasticity are met, researchers should have no doubt in ...
Researchers are commonly interested in comparing the means of independent groups when distributions ...
The effects of nonnormality and heteroscedasticity on the T1 and trimmed F (Ft) test statistics were...
The study describes the various alternatives to the between-subjects ANOVA F test that have been per...
Seven test statistics known to be robust to the combined effects of nonnormality and variance hetero...
Standard least squares analysis of variance methods suffer from poor power under arbitrarily small d...
Confidence intervals must be robust in having nominal and actual probability coverage in close agree...
When the assumptions of normality and homoscedasticity are met, researchers should have no doubt in ...
Researchers can adopt one of many different measures of central tendency and test statistics to exam...
Robustness of power of the analysis of variance technique to the departures from the underlying assu...
Numerous authors suggest that the data gathered by investigators are not normal in shape. Accordingl...
Heteroscedastic consistent covariance matrix (HCCM) estimators provide ways for testing hypotheses a...
We study the properties of heteroskedasticity-robust confidence intervals for regression parameters....
Seven test statistics known to be robust to the combined effects of nonnormality and variance hetero...
This dissertation is composed of a study of estimation methods in classical and test theories and th...
When the assumptions of normality and homoscedasticity are met, researchers should have no doubt in ...
Researchers are commonly interested in comparing the means of independent groups when distributions ...
The effects of nonnormality and heteroscedasticity on the T1 and trimmed F (Ft) test statistics were...
The study describes the various alternatives to the between-subjects ANOVA F test that have been per...
Seven test statistics known to be robust to the combined effects of nonnormality and variance hetero...