stat_center {ordr} | R Documentation |
Compute geometric centers and spreads for ordination factors
Description
Compute geometric centers and spreads for ordination factors
Usage
stat_center(
mapping = NULL,
data = NULL,
geom = "point",
position = "identity",
show.legend = NA,
inherit.aes = TRUE,
...,
fun.data = NULL,
fun.center = NULL,
fun.min = NULL,
fun.max = NULL,
fun.args = list()
)
stat_star(
mapping = NULL,
data = NULL,
geom = "segment",
position = "identity",
show.legend = NA,
inherit.aes = TRUE,
...,
fun.data = NULL,
fun.center = NULL,
fun.args = list()
)
Arguments
mapping |
Set of aesthetic mappings created by |
data |
The data to be displayed in this layer. There are three options: If A A |
geom |
The geometric object to use to display the data, either as a
|
position |
Position adjustment, either as a string naming the adjustment
(e.g. |
show.legend |
logical. Should this layer be included in the legends?
|
inherit.aes |
If |
... |
Additional arguments passed to |
fun.data , fun.center , fun.min , fun.max , fun.args |
Functions and arguments
treated as in |
Value
A ggproto layer.
Biplot layers
ggbiplot()
uses ggplot2::fortify()
internally to produce a single data
frame with a .matrix
column distinguishing the subjects ("rows"
) and
variables ("cols"
). The stat layers stat_rows()
and stat_cols()
simply
filter the data frame to one of these two.
The geom layers geom_rows_*()
and geom_cols_*()
call the corresponding
stat in order to render plot elements for the corresponding factor matrix.
geom_dims_*()
selects a default matrix based on common practice, e.g.
points for rows and arrows for columns.
Ordination aesthetics
The convenience function ord_aes()
can be used to incorporate all
coordinates of the ordination model into a statistical transformation. It
maps the coordinates to the custom aesthetics ..coord1
, ..coord2
, etc.
Some transformations, e.g. stat_center()
, are commutative with projection
to the 'x' and 'y' coordinates. If they detect aesthetics of the form
..coord[0-9]+
, then ..coord1
and ..coord2
are converted to x
and y
while any remaining are ignored.
Other transformations, e.g. stat_spantree()
, yield different results in a
planar biplot when they are computer before or after projection. If such a
stat layer detects these aesthetics, then the lot of them are used in the
transformation.
In either case, the stat layer returns a data frame with position aesthetics
x
and y
.
See Also
Other stat layers:
stat_chull()
,
stat_cone()
,
stat_scale()
,
stat_spantree()
Examples
# scaled PCA of Anderson iris measurements
iris[, -5] %>%
princomp(cor = TRUE) %>%
as_tbl_ord() %>%
mutate_rows(species = iris$Species) %>%
print() -> iris_pca
# row-principal biplot with centroid-based stars
iris_pca %>%
ggbiplot(aes(color = species)) +
theme_bw() +
scale_color_brewer(type = "qual", palette = 2) +
stat_rows_star(alpha = .5, fun.center = "mean") +
geom_rows_point(alpha = .5) +
stat_rows_center(fun.center = "mean", size = 4, shape = 1L) +
ggtitle(
"Row-principal PCA biplot of Anderson iris measurements",
"Segments connect each observation to its within-species centroid"
)