cca
, rda
and
capscale
return similar result objects. Function
capscale
inherits
from rda
and rda
inherits from cca
. This inheritance structure is due to
historic reasons: cca
was the first of these implemented in
vegan. Hence the nomenclature in cca.object
reflects
cca
. This help page describes the internal structure of the
cca
object for programmers.
cca
object has the following elements:
cca
. In rda
, item colsum
contains standard
deviations of species and rowsum
is NA
. If some data
were removed in na.action
, the row sums of excluded
observations are in item rowsum.excluded
in cca
(but
not in rda
). The rowsum.excluded
add to the total
(one) of rowsum
. cca
and
NA
in rda
.terms
component of the
formula
. This is missing if the ordination was not called
with formula
.terms
which is like the terms
component above, but
lists conditions and constraints similarly; xlev
which lists the factor levels, and ordered
which is
TRUE
to ordered factors.
This is produced by vegan internal function
ordiTerminfo
, and it is needed in
predict.cca
with newdata
. This is missing if
the ordination was not called with formula
.na.action
if missing
values in constraints were handled by na.omit
or
na.exclude
(or NULL
if there were no missing
values). This is a vector of indices of missing value rows in the
original data and a class of the action, usually either
"omit"
or "exclude"
.CCA
and pCCA
are
NULL
. If they are specified but have zero rank and zero
eigenvalue (e.g., due to aliasing), they have a standard structure
like described below, but the result scores have zero columns, but
the correct number of rows. The residual component is never
NULL
, and if there is no residual variation (like in
overdefined model), its scores have zero columns. The standard
print
command does not show NULL
components, but it
prints zeros for zeroed components. Items pCCA
, CCA
and CA
contain following items:alias
alias.cca
does not access this item
directly, but it finds the aliased variables and their defining
equations from the QR
item.biplot
CCA
.centroids
CCA
. Missing if the ordination was not
called with formula
.eig
CCA
and CA
.envcentre
pCCA
and in CCA
.Fit
pCCA
.QR
qr
.
The constrained ordination
algorithm is based on QR decomposition of constraints and
conditions (environmental data). The environmental data
are first centred in rda
or weighted and centred in
cca
. The QR decomposition is used in many functions that
access cca
results, and it can be used to find many items
that are not directly stored in the object. For examples, see
coef.cca
, coef.rda
,
vif.cca
, permutest.cca
,
predict.cca
, predict.rda
,
calibrate.cca
. For possible uses of this component,
see qr
. In pCCA
and CCA
.rank
qrank
pCCA
and
CCA
components. Only in CCA
.tot.chi
real.tot.chi
capscale
, these will be included in tot.chi
,
and the sum of positive eigenvalues will be given in these items.imaginary.chi
, imaginary.rank
,
imaginary.u.eig
capscale
. Only in CA
item and only if
negative eigenvalues were found in capscale
.u
cca
object, but they
are made when the object is accessed with functions like
scores.cca
, summary.cca
or
plot.cca
, or their rda
variants. Only in
CCA
and CA
. In the CCA
component these are
the so-called linear combination scores. v
na.action
that lists the
omitted species. Only in CCA
and CA
.wa
cca
) or
weighted sums (rda
) of
v
with weights Xbar
, but the multiplying effect of
eigenvalues removed. These often are known as WA scores in
cca
. Only in CCA
.wa.excluded, u.excluded
na.action = na.exclude
in CCA
and CA
components if these could be calculated.Xbar
CCA
this is after possible pCCA
or
after partialling out the effects of conditions, and in CA
after both pCCA
and CCA
. In cca
the
standardization is Chi-square, and in rda
centring
and optional scaling by species standard deviations using function
scale
.na.action
was set to na.exclude
or na.omit
, the
result will have some extra items:
subset
TRUE
for included cases).na.action
na.action
which is a named vector of indices of
removed items. The class of the vector is either "omit"
or
"exclude"
as set by na.action
. The na.action
is applied after subset
so that the indices refer to the subset
data.residuals.zombie
nobs.cca
to find
the number of observations.rowsum.excluded
cca
.CCA$wa.excluded
na.action
was na.exclude
and the
scores could be calculated. The scores cannot be found for
capscale
and in partial ordination.CA$u.excluded
capscale
and dbrda
. Function
capscale
uses rda
and returns its result
object, but it may add some items depending on its arguments: real.tot.chi
tot.chi
gives the total
inertia with negative eigenvalues. This item is given for the
whole model and for each component pCCA
, CCA
and
CA
if there are negative eigenvalues.metaMDSdist
metaMDSdist = TRUE
.sqrt.dist
TRUE
if squareroots of
dissimilarities were used.ac
add = TRUE
.add
ac
, either
"lingoes"
or "cailliez"
(Legendre & Legendre
2012).adjust
capscale
, section Notes.G
pCCA
and
CCA
, and for CCA
it is the residual $G$ after
pCCA
.dbrda
does not use rda
but
provides a parallel implementation for dissimilarities. Its result
output is very similar to capscale
described above
with the following differences: Xbar
, v
NA
because they cannot be
calculated from dissimilarities.Fit
pCCA
is from Gower double centred
dissimilarities G
instead of Xbar
(that does not
exist).G
pCCA
, CCA
and
CA
components. It always gives the transformed
dissimilarities as they enter the stage of analysis, i.e.,
before applying conditions or constraints.eig
CCA
and pCCA
.u
imaginary.u
. The number of columns of real scores
(positive eigenvalues) is given in item poseig
. There is
no imaginary.u.eig
.cca
objects are described in this section in cca
. Also for
a hacker interface, it may be better to use following low level
functions to access the results:
scores.cca
(which also scales results),
predict.cca
(which can also use newdata
),
fitted.cca
, residuals.cca
,
alias.cca
, coef.cca
,
model.frame.cca
, model.matrix.cca
,
deviance.cca
, eigenvals.cca
,
RsquareAdj.cca
,
weights.cca
, nobs.cca
, or rda
variants of these functions.
You can use as.mlm
to cast a cca.object
into
result of multiple response
linear model (lm
) in order to more easily find some
statistics (which in principle could be directly found from the
cca
object as well). This section in cca
gives a more complete list of
methods to handle the constrained ordination result object.
# Some species will be missing in the analysis, because only a subset
# of sites is used below.
data(dune)
data(dune.env)
mod <- cca(dune[1:15,] ~ ., dune.env[1:15,])
# Look at the names of missing species
attr(mod$CCA$v, "na.action")
# Look at the names of the aliased variables:
mod$CCA$alias
# Access directly constrained weighted orthonormal species and site
# scores, constrained eigenvalues and margin sums.
spec <- mod$CCA$v
sites <- mod$CCA$u
eig <- mod$CCA$eig
rsum <- mod$rowsum
csum <- mod$colsum
Run the code above in your browser using DataLab