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Abstract
Simultaneous inference is a common problem in many areas of application. If multiple
null hypotheses are tested simultaneously, the probability of rejecting erroneously
at least one of them increases beyond the pre-specified significance level. Simultaneous
inference procedures have to be used which adjust for multiplicity and thus control
the overall type I error rate. In this paper we describe simultaneous inference procedures
in general parametric models, where the experimental questions are specified through
a linear combination of elemental model parameters. The framework described here is
quite general and extends the canonical theory of multiple comparison procedures in
ANOVA models to linear regression problems, generalized linear models, linear mixed
effects models, the Cox model, robust linear models, etc. Several examples using a
variety of different statistical models illustrate the breadth of the results. For
the analyses we use the R add-on package multcomp, which provides a convenient interface
to the general approach adopted here.
Copyright 2008 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim