
Fit an analysis of variance model by a call to lm
for each stratum.
aov(formula, data = NULL, projections = FALSE, qr = TRUE,
contrasts = NULL, …)
A formula specifying the model.
A data frame in which the variables specified in the formula will be found. If missing, the variables are searched for in the standard way.
Logical flag: should the projections be returned?
Logical flag: should the QR decomposition be returned?
A list of contrasts to be used for some of the factors
in the formula. These are not used for any Error
term, and
supplying contrasts for factors only in the Error
term will give
a warning.
Arguments to be passed to lm
, such as subset
or na.action
. See ‘Details’ about weights
.
An object of class c("aov", "lm")
or for multiple responses
of class c("maov", "aov", "mlm", "lm")
or for multiple error
strata of class c("aovlist", "listof")
. There are
print
and summary
methods available for these.
This provides a wrapper to lm
for fitting linear models to
balanced or unbalanced experimental designs.
The main difference from lm
is in the way print
,
summary
and so on handle the fit: this is expressed in the
traditional language of the analysis of variance rather than that of
linear models.
If the formula contains a single Error
term, this is used to
specify error strata, and appropriate models are fitted within each
error stratum.
The formula can specify multiple responses.
Weights can be specified by a weights
argument, but should not
be used with an Error
term, and are incompletely supported
(e.g., not by model.tables
).
Chambers, J. M., Freeny, A and Heiberger, R. M. (1992) Analysis of variance; designed experiments. Chapter 5 of Statistical Models in S eds J. M. Chambers and T. J. Hastie, Wadsworth & Brooks/Cole.
lm
, summary.aov
,
replications
, alias
,
proj
, model.tables
, TukeyHSD
# NOT RUN {
## From Venables and Ripley (2002) p.165.
## Set orthogonal contrasts.
op <- options(contrasts = c("contr.helmert", "contr.poly"))
( npk.aov <- aov(yield ~ block + N*P*K, npk) )
# }
# NOT RUN {
summary(npk.aov)
# }
# NOT RUN {
coefficients(npk.aov)
## to show the effects of re-ordering terms contrast the two fits
aov(yield ~ block + N * P + K, npk)
aov(terms(yield ~ block + N * P + K, keep.order = TRUE), npk)
## as a test, not particularly sensible statistically
npk.aovE <- aov(yield ~ N*P*K + Error(block), npk)
npk.aovE
## IGNORE_RDIFF_BEGIN
summary(npk.aovE)
## IGNORE_RDIFF_END
options(op) # reset to previous
# }
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