Statistics Resembling Deviance and AIC for Constrained Ordination
The functions extract statistics that resemble deviance and AIC from the
result of constrained correspondence analysis cca or
redundancy analysis rda. These functions are rarely
needed directly, but they are called by step in
automatic model building. Actually, cca and
rda do not have AIC and these functions
are certainly wrong.
## S3 method for class 'cca' deviance(object, ...) ## S3 method for class 'cca' extractAIC(fit, scale = 0, k = 2, ...)
object |
|
fit |
fitted model from constrained ordination. |
scale |
optional numeric specifying the scale parameter of the model,
see |
k |
numeric specifying the "weight" of the equivalent degrees of
freedom (=: |
... |
further arguments. |
The functions find statistics that
resemble deviance and AIC in constrained
ordination. Actually, constrained ordination methods do not have a
log-Likelihood, which means that they cannot have AIC and deviance.
Therefore you should not use these functions, and if you use them, you
should not trust them. If you use these functions, it remains as your
responsibility to check the adequacy of the result.
There is little need to call these functions directly. However, they
are called implicitly in step function used in automatic
selection of constraining variables. You should check the resulting
model with some other criteria, because the statistics used here are
unfounded. In particular, the penalty k is not properly
defined, and the default k = 2 is not justified
theoretically. If you have only continuous covariates, the step
function will base the model building on magnitude of eigenvalues, and
the value of k only influences the stopping point (but the
variables with the highest eigenvalues are not necessarily the most
significant in permutation tests in anova.cca). If you
also have multi-class factors, the value of k will have a
capricious effect in model building. The step function
will pass arguments to add1.cca and
drop1.cca, and setting test = "permutation"
will provide permutation tests of each deletion and addition which
can help in judging the validity of the model building.
The deviance functions return “deviance”, and
extractAIC returns effective degrees of freedom and “AIC”.
These functions are unfounded and untested and they should not be used
directly or implicitly. Moreover, usual caveats in using
step are very valid.
Jari Oksanen
Godínez-Domínguez, E. & Freire, J. (2003) Information-theoretic approach for selection of spatial and temporal models of community organization. Marine Ecology Progress Series 253, 17–24.
# The deviance of correspondence analysis equals Chi-square data(dune) data(dune.env) chisq.test(dune) deviance(cca(dune)) # Stepwise selection (forward from an empty model "dune ~ 1") ord <- cca(dune ~ ., dune.env) step(cca(dune ~ 1, dune.env), scope = formula(ord))
Please choose more modern alternatives, such as Google Chrome or Mozilla Firefox.