anova.gls {nlme} | R Documentation |
When only one fitted model object is present, a data frame with the
sums of squares, numerator degrees of freedom, F-values, and P-values
for Wald tests for the terms in the model (when Terms
and
L
are NULL
), a combination of model terms (when
Terms
in not NULL
), or linear combinations of the model
coefficients (when L
is not NULL
). Otherwise, when
multiple fitted objects are being compared, a data frame with
the degrees of freedom, the (restricted) log-likelihood, the
Akaike Information Criterion (AIC), and the Bayesian Information
Criterion (BIC) of each object is returned. If test=TRUE
,
whenever two consecutive objects have different number of degrees of
freedom, a likelihood ratio statistic, with the associated p-value is
included in the returned data frame.
## S3 method for class 'gls' anova(object, ..., test, type, adjustSigma, Terms, L, verbose)
object |
a fitted model object inheriting from class |
... |
other optional fitted model objects inheriting from
classes |
test |
an optional logical value controlling whether likelihood
ratio tests should be used to compare the fitted models represented
by |
type |
an optional character string specifying the type of sum of
squares to be used in F-tests for the terms in the model. If
|
adjustSigma |
an optional logical value. If |
Terms |
an optional integer or character vector specifying which
terms in the model should be jointly tested to be zero using a Wald
F-test. If given as a character vector, its elements must correspond
to term names; else, if given as an integer vector, its elements must
correspond to the order in which terms are included in the
model. This argument is only used when a single fitted object is
passed to the function. Default is |
L |
an optional numeric vector or array specifying linear
combinations of the coefficients in the model that should be tested
to be zero. If given as an array, its rows define the linear
combinations to be tested. If names are assigned to the vector
elements (array columns), they must correspond to coefficients
names and will be used to map the linear combination(s) to the
coefficients; else, if no names are available, the vector elements
(array columns) are assumed in the same order as the coefficients
appear in the model. This argument is only used when a single fitted
object is passed to the function. Default is |
verbose |
an optional logical value. If |
a data frame inheriting from class "anova.lme"
.
Likelihood comparisons are not meaningful for objects fit using restricted maximum likelihood and with different fixed effects.
José Pinheiro and Douglas Bates bates@stat.wisc.edu
Pinheiro, J. C. and Bates, D. M. (2000), Mixed-Effects Models in S and S-PLUS, Springer, New York.
gls
, gnls
,
lme
, logLik.gls
,
AIC
, BIC
,
print.anova.lme
# AR(1) errors within each Mare fm1 <- gls(follicles ~ sin(2*pi*Time) + cos(2*pi*Time), Ovary, correlation = corAR1(form = ~ 1 | Mare)) anova(fm1) # variance changes with a power of the absolute fitted values? fm2 <- update(fm1, weights = varPower()) anova(fm1, fm2) # Pinheiro and Bates, p. 251-252 fm1Orth.gls <- gls(distance ~ Sex * I(age - 11), Orthodont, correlation = corSymm(form = ~ 1 | Subject), weights = varIdent(form = ~ 1 | age)) fm2Orth.gls <- update(fm1Orth.gls, corr = corCompSymm(form = ~ 1 | Subject)) anova(fm1Orth.gls, fm2Orth.gls) # Pinheiro and Bates, pp. 215-215, 255-260 #p. 215 fm1Dial.lme <- lme(rate ~(pressure + I(pressure^2) + I(pressure^3) + I(pressure^4))*QB, Dialyzer, ~ pressure + I(pressure^2)) # p. 216 fm2Dial.lme <- update(fm1Dial.lme, weights = varPower(form = ~ pressure)) # p. 255 fm1Dial.gls <- gls(rate ~ (pressure + I(pressure^2) + I(pressure^3) + I(pressure^4))*QB, Dialyzer) fm2Dial.gls <- update(fm1Dial.gls, weights = varPower(form = ~ pressure)) anova(fm1Dial.gls, fm2Dial.gls) fm3Dial.gls <- update(fm2Dial.gls, corr = corAR1(0.771, form = ~ 1 | Subject)) anova(fm2Dial.gls, fm3Dial.gls) # anova.gls to compare a gls and an lme fit anova(fm3Dial.gls, fm2Dial.lme, test = FALSE) # Pinheiro and Bates, pp. 261-266 fm1Wheat2 <- gls(yield ~ variety - 1, Wheat2) fm3Wheat2 <- update(fm1Wheat2, corr = corRatio(c(12.5, 0.2), form = ~ latitude + longitude, nugget = TRUE)) # Test a specific contrast anova(fm3Wheat2, L = c(-1, 0, 1))