anova.gam {mgcv} | R Documentation |
Performs hypothesis tests relating to one or more fitted
gam
objects. For a single fitted gam
object, Wald tests of
the significance of each parametric and smooth term are performed. Otherwise
the fitted models are compared using an analysis of deviance table. The tests
are usually approximate, unless the models are un-penalized. Simulation evidence
suggests that best p-value performance results from using ML estimated smoothing parameters.
## S3 method for class 'gam': anova(object, ..., dispersion = NULL, test = NULL, alpha = 0, freq = FALSE) ## S3 method for class 'anova.gam': print(x, digits = max(3, getOption("digits") - 3),...)
object,... |
fitted model objects of class gam as produced by gam() . |
x |
an anova.gam object produced by a single model call to anova.gam() . |
dispersion |
a value for the dispersion parameter: not normally used. |
test |
what sort of test to perform for a multi-model call. One of
"Chisq" , "F" or "Cp" . |
alpha |
adjustment to degrees of freedom per estimated smoothing parameter for a
term when called with a single model object. See summary.gam for details. |
freq |
whether to use frequentist or Bayesian approximations for single smooth term
p-values. See summary.gam for details. |
digits |
number of digits to use when printing output. |
If more than one fitted model is provided than anova.glm
is
used. If only one model is provided then the significance of each model term
is assessed using Wald tests: see summary.gam
for details of the
actual computations.
In the latter case print.anova.gam
is used as the
printing method. Note that the p-values for smooth terms are approximate only:
simulation evidence suggests that they work best with REML or ML smoothness selection.
In the multi-model case anova.gam
produces output identical to
anova.glm
, which it in fact uses.
In the single model case an object of class anova.gam
is produced,
which is in fact an object returned from summary.gam
.
print.anova.gam
simply produces tabulated output.
P-values for smooth terms are only approximate.
Simon N. Wood simon.wood@r-project.org with substantial improvements by Henric Nilsson.
gam
, predict.gam
,
gam.check
, summary.gam
library(mgcv) set.seed(0) dat <- gamSim(5,n=200,scale=2) b<-gam(y ~ x0 + s(x1) + s(x2) + s(x3),data=dat) anova(b) b1<-gam(y ~ x0 + s(x1) + s(x2),data=dat) anova(b,b1,test="F")