procrustes
rotates a configuration to maximum similarity
with another configuration. Function protest
tests the
non-randomness (`significance') between two configurations.procrustes(X, Y, scale = TRUE, symmetric = FALSE, scores = "sites", ...)
## S3 method for class 'procrustes':
summary(object, digits = getOption("digits"), ...)
## S3 method for class 'procrustes':
plot(x, kind=1, choices=c(1,2), to.target = TRUE,
type = "p", xlab, ylab, main, ar.col = "blue", len=0.05,
cex = 0.7, ...)
## S3 method for class 'procrustes':
points(x, display = c("target", "rotated"), ...)
## S3 method for class 'procrustes':
text(x, display = c("target", "rotated"), labels, ...)
## S3 method for class 'procrustes':
lines(x, type = c("segments", "arrows"), choices = c(1, 2), ...)
## S3 method for class 'procrustes':
residuals(object, ...)
## S3 method for class 'procrustes':
fitted(object, truemean = TRUE, ...)
## S3 method for class 'procrustes':
predict(object, newdata, truemean = TRUE, ...)
protest(X, Y, scores = "sites", permutations = 999, strata, ...)
Y
.display
argument
used with the corresponding scores
function: see
scores
, scores.cca
and
<procrustes
.plot
function, the kind of plot produced:
kind = 1
plots shifts in two configurations, kind = 0
draws a corresponding empty plot, and kind = 2
plots an impulse diagram of residuals."target"
or "rotated"
matrix as points.plot
, the type
can be "points"
or "text"
to select the marker for
the tail of the arrow, or "none"
for drawing an empty
plot. In lines
theplot.procrustes
needs
truemean = FALSE
.procrustes
and protest
parameters are passed to scores
, in
graphical functions to underlying graphical functions.procrustes
returns an object of class
procrustes
with items. Function protest
inherits from
procrustes
, but amends that with some new items:Y
.X
and Yrot
.ss
statistic.protest
: Procrustes correlation from non-permuted solution.density.protest
function.t
scale=FALSE
, the function only
rotates matrix Y
. If scale=TRUE
, it scales linearly
configuration Y
for maximum similarity. Since Y
is scaled
to fit X
, the scaling is non-symmetric. However, with
symmetric=TRUE
, the configurations are scaled to equal
dispersions and a symmetric version of the Procrustes statistic
is computed. Instead of matrix, X
and Y
can be results from an
ordination from which scores
can extract results.
Function procrustes
passes extra arguments to
scores
, scores.cca
etc. so that you can
specify arguments such as scaling
.
Function plot
plots a procrustes
object and returns
invisibly an ordiplot
object so that function
identify.ordiplot
can be used for identifying
points. The items in the ordiplot
object are called
heads
and points
with kind=1
(ordination
diagram) and sites
with kind=2
(residuals). In
ordination diagrams, the arrow heads point to the target
configuration if to.target = TRUE
, and to rotated
configuration if to.target = FALSE
. Target and original
rotated axes are shown as cross hairs in two-dimensional Procrustes
analysis, and with a higher number of dimensions, the rotated axes
are projected onto plot with their scaled and centred
range. Function plot
passes parameters to underlying plotting
functions. For full control of plots, you can draw the axes using
plot
with kind = 0
, and then add items with
points
or lines
. These functions pass all parameters
to the underlying functions so that you can select the plotting
characters, their size, colours etc., or you can select the width,
colour and type of line segments
or arrows, or you can
select the orientation and head width of arrows
.
Function residuals
returns the pointwise
residuals, and fitted
the fitted values, either centred to zero
mean (if truemean=FALSE
) or with the original scale (these
hardly make sense if symmetric = TRUE
). In
addition, there are summary
and print
methods.
If matrix X
has a lower number of columns than matrix
Y
, then matrix X
will be filled with zero columns to
match dimensions. This means that the function can be used to rotate
an ordination configuration to an environmental variable (most
practically extracting the result with the fitted
function). Function predict
can be used to add new rotated
coordinates to the target. The predict
function will always
translate coordinates to the original non-centred matrix. The
function canot be used with newdata
for symmetric
analysis.
Function protest
performs symmetric Procrustes analysis
repeatedly to estimate the `significance' of the Procrustes
statistic. Function protest
uses a correlation-like statistic
derived from the symmetric Procrustes sum of squares $ss$ as
$r =\sqrt{1-ss}$, and also prints the sum of
squares of the symmetric analysis, sometimes called
$m_{12}^2$. Function protest
has own
print
method, but otherwise uses procrustes
methods. Thus plot
with a protest
object yields a
``Procrustean superimposition plot.''
Peres-Neto, P.R. and Jackson, D.A. (2001). How well do multivariate data sets match? The advantages of a Procrustean superimposition approach over the Mantel test. Oecologia 129: 169-178.
monoMDS
, for obtaining
objects for procrustes
, and mantel
for an
alternative to protest
without need of dimension reduction.data(varespec)
vare.dist <- vegdist(wisconsin(varespec))
mds.null <- monoMDS(vare.dist, y = cmdscale(vare.dist))
mds.alt <- monoMDS(vare.dist)
vare.proc <- procrustes(mds.alt, mds.null)
vare.proc
summary(vare.proc)
plot(vare.proc)
plot(vare.proc, kind=2)
residuals(vare.proc)
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