Article ID Journal Published Year Pages File Type
416944 Computational Statistics & Data Analysis 2011 10 Pages PDF
Abstract

We study comparisons of several treatments with a common control when it is believed a priori   that the treatment means, μiμi, are at least as large as the control mean, μ0μ0. In this setting, which is called a tree ordering, we study multiple comparisons that determine whether μi>μ0μi>μ0 or μi=μ0μi=μ0 for each treatment. The classical procedure by Dunnett (1955) and the step-down and step-up techniques by Dunnett and Tamhane, 1991 and Dunnett and Tamhane, 1992 are well known. The results in Marcus and Talpaz (1992) provide multiple comparisons based on the maximum likelihood estimates restricted by the tree ordering. We also study two-stage procedures that consist of the likelihood ratio test of homogeneity with the alternative constrained by the tree ordering followed by two-sample tt comparisons with possibly different critical values for the two-sample comparisons. Marcus et al. (1976) discuss the use of closed tests in such situations and propose using a closed version of the restricted likelihood ratio test. We describe step-down versions of the Marcus–Talpaz, the two-stage, and the likelihood ratio procedures, as well as a closed version of the Marcus–Talpaz multiple comparison procedure. Using Monte Carlo techniques, we study the familywise errors and powers of these procedures and make some recommendations concerning techniques that perform well for all tree ordered mean vectors.

Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
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