xvalDapc
performs stratified cross-validation of DAPC
using varying numbers of PCs (and keeping the number of discriminant
functions fixed); xvalDapc
is a generic with methods for
data.frame
and matrix
.xvalDapc(x, grp, n.pca.max = 300, n.da = NULL,
training.set = 0.9, result = c("groupMean", "overall"),
center = TRUE, scale = FALSE,
n.pca=NULL, n.rep = 30, xval.plot = TRUE, ...)
## S3 method for class 'data.frame':
xvalDapc(x, grp, n.pca.max = 300, n.da = NULL,
training.set = 0.9, result = c("groupMean", "overall"),
center = TRUE, scale = FALSE,
n.pca=NULL, n.rep = 30, xval.plot = TRUE, ...)
## S3 method for class 'matrix':
xvalDapc(x, grp, n.pca.max = 300, n.da = NULL,
training.set = 0.9, result = c("groupMean", "overall"),
center = TRUE, scale = FALSE,
n.pca=NULL, n.rep = 30, xval.plot = TRUE, ...)
a data.frame
or a matrix
used as input of DAPC.factor
indicating the group membership of
individuals.integer
indicating the number of axes retained in the
Discriminant Analysis step. If NULL
, n.da defaults to 1 less than
the number of groups.logical
indicating whether variables should be centred to
mean 0 (TRUE, default) or not (FALSE). Always TRUE for logical
indicating whether variables should be scaled
(TRUE) or not (FALSE, default). Scaling consists in dividing variables by their
(estimated) standard deviation to account for trivial differences in
variances.integer
vector indicating the number of
different number of PCA axes to be retained for the cross
validation; if NULL
, this will be dertermined automatically.list
containing seven items, and a plot
of the results.
The first is a data.frame
with two columns, the first giving the number
of PCs of PCA retained in the corresponding DAPC, and the second giving the proportion
of successful group assignment for each replicate.
The second item gives the mean and confidence interval for random chance.
The third gives the mean successful assignment at each level of PC retention.
The fourth indicates which number of PCs is associated with the highest mean success.
The fifth gives the Root Mean Squared Error at each level of PC retention.
The sixth indicates which number of PCs is associated with the lowest MSE.
The seventh item contains the DAPC carried out with the optimal number of PCs,
determined with reference to MSE.
If xval.plot=TRUE
a scatterplot of the results of cross-validation
will be displayed.dapc
## CROSS-VALIDATION ##
data(sim2pop)
xval <- xvalDapc(sim2pop@tab, pop(sim2pop), n.pca.max=100, n.rep=3)
xval
Run the code above in your browser using DataLab