This paper considers the common problem of testing the equality of means in a repeated measures design. Recent results indicate that practical problems can arise when computing confidence intervals for all pairwise differences of the means in conjunction with the Bonferroni inequality. This suggests, and is confirmed here, that a problem might occur when performing an omnibus test of equal means. The problem is that the probability of rejecting is not minimized when the means are equal and the usual univariate F test is used with the Huynh‐Feldt correction (ε) for the degrees of freedom. That is, power can actually decrease as the mean of one group is lowered, although eventually it increases. A similar problem is found when using a multiva...
Comparing individual confidence intervals of two population means is an incorrect procedure for dete...
We consider comparisons of several treatments with a common control when it is believed that the tre...
Confidence intervals must be robust in having nominal and actual probability coverage in close agree...
A comparative study is made of three tests, developed by James (1951), Welch (1951) and Brown & ...
Standard approaches for analyzing the difference in two means, where partially overlapping samples a...
Given a random sample from each of two independent groups, this article takes up the problem of esti...
The two sample t-test is the test usually taught in introductory statistics courses to test for the ...
Nonnormality and covariance heterogeneity between groups affects the validity of the traditional rep...
Researchers are commonly interested in comparing the means of independent groups when distributions ...
A modification to testing pairwise comparisons that may provide better control of Type I errors in t...
Numerous authors suggest that the data gathered by investigators are not normal in shape. Accordingl...
The effects of nonnormality and heteroscedasticity on the T1 and trimmed F (Ft) test statistics were...
Conventional and approximate degrees of freedom procedures for testing multivariate interaction cont...
©2017 JMASM, Inc. Standard approaches for analyzing the difference in two means, where partially ove...
Doctor of PhilosophyDepartment of StatisticsHaiyan WangComparing the means of two populations is a c...
Comparing individual confidence intervals of two population means is an incorrect procedure for dete...
We consider comparisons of several treatments with a common control when it is believed that the tre...
Confidence intervals must be robust in having nominal and actual probability coverage in close agree...
A comparative study is made of three tests, developed by James (1951), Welch (1951) and Brown & ...
Standard approaches for analyzing the difference in two means, where partially overlapping samples a...
Given a random sample from each of two independent groups, this article takes up the problem of esti...
The two sample t-test is the test usually taught in introductory statistics courses to test for the ...
Nonnormality and covariance heterogeneity between groups affects the validity of the traditional rep...
Researchers are commonly interested in comparing the means of independent groups when distributions ...
A modification to testing pairwise comparisons that may provide better control of Type I errors in t...
Numerous authors suggest that the data gathered by investigators are not normal in shape. Accordingl...
The effects of nonnormality and heteroscedasticity on the T1 and trimmed F (Ft) test statistics were...
Conventional and approximate degrees of freedom procedures for testing multivariate interaction cont...
©2017 JMASM, Inc. Standard approaches for analyzing the difference in two means, where partially ove...
Doctor of PhilosophyDepartment of StatisticsHaiyan WangComparing the means of two populations is a c...
Comparing individual confidence intervals of two population means is an incorrect procedure for dete...
We consider comparisons of several treatments with a common control when it is believed that the tre...
Confidence intervals must be robust in having nominal and actual probability coverage in close agree...