Functions for performing and displaying a spatial partitioning of cca or rda results
The function mso
adds an attribute vario
to
an object of class "cca"
that describes the spatial
partitioning of the cca
object and performs an optional
permutation test for the spatial independence of residuals. The
function plot.mso
creates a diagnostic plot of the spatial
partitioning of the "cca"
object.
mso(object.cca, object.xy, grain = 1, round.up = FALSE, permutations = 0) msoplot(x, alpha = 0.05, explained = FALSE, ylim = NULL, legend = "topleft", ...)
object.cca |
|
object.xy |
A vector, matrix or data frame with the spatial
coordinates of the data represented by |
grain |
Interval size for distance classes. |
round.up |
Determines the choice of breaks. If false, distances are rounded to the nearest multiple of grain. If true, distances are rounded to the upper multiple of grain. |
permutations |
a list of control values for the permutations
as returned by the function |
x |
A result object of |
alpha |
Significance level for the two-sided permutation test of the Mantel statistic for spatial independence of residual inertia and for the point-wise envelope of the variogram of the total variance. A Bonferroni-type correction can be achieved by dividing the overall significance value (e.g. 0.05) by the number of distance classes. |
explained |
If false, suppresses the plotting of the variogram of explained variance. |
ylim |
Limits for y-axis. |
legend |
The x and y co-ordinates to be used to position the legend.
They can be specified by keyword or in any way which is accepted
by |
... |
Other arguments passed to functions. |
The Mantel test is an adaptation of the function mantel
of the
vegan package to the parallel testing of several distance classes. It
compares the mean inertia in each distance class to the pooled mean
inertia of all other distance classes.
If there are explanatory variables (RDA, CCA, pRDA, pCCA) and a
significance test for residual autocorrelation was performed when
running the function mso
, the function plot.mso
will
print an estimate of how much the autocorrelation (based on
significant distance classes) causes the global error variance of the
regression analysis to be underestimated
The function mso
returns an amended cca
or rda
object with the additional attributes grain
, H
,
H.test
and vario
.
grain |
The grain attribute defines the interval size of the distance classes . |
H |
H is an object of class 'dist' and contains the geographic distances between observations. |
H.test |
H.test contains a set of dummy variables that describe
which pairs of observations (rows = elements of |
vario |
The vario attribute is a data frame that contains some or all of the following components for the rda case (cca case in brackets):
|
The function is based on the code published in the Ecological Archives E085-006 (doi: 10.1890/02-0738).
The responsible author was Helene Wagner.
Wagner, H.H. 2004. Direct multi-scale ordination with canonical correspondence analysis. Ecology 85: 342–351.
Function cca
and rda
,
cca.object
.
## Reconstruct worked example of Wagner (submitted): X <- matrix(c(1, 2, 3, 2, 1, 0), 3, 2) Y <- c(3, -1, -2) tmat <- c(1:3) ## Canonical correspondence analysis (cca): Example.cca <- cca(X, Y) Example.cca <- mso(Example.cca, tmat) msoplot(Example.cca) Example.cca$vario ## Correspondence analysis (ca): Example.ca <- mso(cca(X), tmat) msoplot(Example.ca) ## Unconstrained ordination with test for autocorrelation ## using oribatid mite data set as in Wagner (2004) data(mite) data(mite.env) data(mite.xy) mite.cca <- cca(log(mite + 1)) mite.cca <- mso(mite.cca, mite.xy, grain = 1, permutations = 99) msoplot(mite.cca) mite.cca ## Constrained ordination with test for residual autocorrelation ## and scale-invariance of species-environment relationships mite.cca <- cca(log(mite + 1) ~ SubsDens + WatrCont + Substrate + Shrub + Topo, mite.env) mite.cca <- mso(mite.cca, mite.xy, permutations = 99) msoplot(mite.cca) mite.cca
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