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Scheffe's method applies to the set of estimates of all possible contrasts among the factor level means, not just the pairwise differences considered by Tukey's method.
ScheffeTest(x, ...) # S3 method for aov
ScheffeTest(x, which = NULL, contrasts = NULL,
conf.level = 0.95, ...)
# S3 method for default
ScheffeTest(x, g = NULL, which = NULL,
contrasts = NULL, conf.level = 0.95, ...)
either a fitted model object, usually an aov
fit, when g is left to NULL
or a response variable to be evalutated by g (which mustn't be NULL
then).
the grouping variable.
character vector listing terms in the fitted model for which the intervals should be calculated. Defaults to all the terms.
a r
is the number of factor levels and c
the number of contrasts. Each column must contain a full contrast ("sum") adding up to 0. Note that the argument which
must be defined, when non default contrasts are used.
Default value of contrasts
is NULL
. In this case all pairwise contrasts will be reported.
numeric value between zero and one giving the confidence level to use. If this is set to NA, just a matrix with the p-values will be returned.
further arguments, currently not used.
A list of classes c("PostHocTest")
, with one component for each term requested in which
. Each component is a matrix with columns diff
giving the difference in the observed means, lwr.ci
giving the lower end point of the interval, upr.ci
giving the upper end point and pval
giving the p-value after adjustment for the multiple comparisons.
There are print and plot methods for class "PostHocTest"
. The plot method does not accept xlab
, ylab
or main
arguments and creates its own values for each plot.
Robert O. Kuehl, Steel R. (2000) Design of experiments. Duxbury
Steel R.G.D., Torrie J.H., Dickey, D.A. (1997) Principles and Procedures of Statistics, A Biometrical Approach. McGraw-Hill
# NOT RUN {
fm1 <- aov(breaks ~ wool + tension, data = warpbreaks)
ScheffeTest(x=fm1)
ScheffeTest(x=fm1, which="tension")
TukeyHSD(fm1)
# some special contrasts
y <- c(7,33,26,27,21,6,14,19,6,11,11,18,14,18,19,14,9,12,6,
24,7,10,1,10,42,25,8,28,30,22,17,32,28,6,1,15,9,15,
2,37,13,18,23,1,3,4,6,2)
group <- factor(c(1,1,1,1,1,1,1,1,2,2,2,2,2,2,2,2,3,3,3,3,3,
3,3,3,4,4,4,4,4,4,4,4,5,5,5,5,5,5,5,5,6,6,6,6,6,6,6,6))
r.aov <- aov(y ~ group)
ScheffeTest(r.aov, contrasts=matrix( c(1,-0.5,-0.5,0,0,0,
0,0,0,1,-0.5,-0.5), ncol=2) )
# just p-values:
ScheffeTest(r.aov, conf.level=NA)
# }
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