| goodness.metaMDS {vegan} | R Documentation |
Goodness of Fit and Shepard Plot for Nonmetric Multidimensional Scaling
Description
Function goodness.metaMDS find goodness of fit measure for
points in nonmetric multidimensional scaling, and function
stressplot makes a Shepard diagram.
Usage
## S3 method for class 'metaMDS'
goodness(object, dis, ...)
## Default S3 method:
stressplot(object, dis, pch, p.col = "blue", l.col = "red",
lwd = 2, ...)
Arguments
object |
|
dis |
Dissimilarities. This should not be used with
|
pch |
Plotting character for points. Default is dependent on the number of points. |
p.col, l.col |
Point and line colours. |
lwd |
Line width. For |
... |
Other parameters to functions, e.g. graphical parameters. |
Details
Function goodness.metaMDS finds a goodness of fit statistic
for observations (points). This is defined so that sum of squared
values is equal to squared stress. Large values indicate poor fit.
The absolute values of the goodness statistic depend on the
definition of the stress: isoMDS expresses
stress in percents, and therefore its goodness values are 100 times
higher than those of monoMDS which expresses the
stress as a proportion.
Function stressplot draws a Shepard diagram which is a plot
of ordination distances and monotone or linear fit line against
original dissimilarities. In addition, it displays two
correlation-like statistics on the goodness of fit in the graph.
The nonmetric fit is based on stress S and defined as R^2
= 1-S^2. The “linear fit” is the squared
correlation between fitted values and ordination distances. For
monoMDS, the “linear fit” and R^2
from “stress type 2” are equal.
Both functions can be used with metaMDS,
monoMDS and isoMDS. The original
dissimilarities should not be given for monoMDS or
metaMDS results (the latter tries to reconstruct the
dissimilarities using metaMDSredist if
isoMDS was used as its engine). With
isoMDS the dissimilarities must be given. In
either case, the functions inspect that dissimilarities are
consistent with current ordination, and refuse to analyse
inconsistent dissimilarities. Function goodness.metaMDS is
generic in vegan, but you must spell its name completely with
isoMDS which has no class.
Value
Function goodness returns a vector of values. Function
stressplot returns invisibly an object with items for
original dissimilarities, ordination distances and fitted values.
Author(s)
Jari Oksanen.
See Also
metaMDS, monoMDS,
isoMDS, Shepard. Similar
diagrams for eigenvector ordinations can be drawn with
stressplot.wcmdscale, stressplot.cca.
Examples
data(varespec)
mod <- metaMDS(varespec)
stressplot(mod)
gof <- goodness(mod)
gof
plot(mod, display = "sites", type = "n")
points(mod, display = "sites", cex = 2*gof/mean(gof))