sample.split {caTools}  R Documentation 
Split data from vector Y into two sets in predefined ratio while preserving relative ratios of different labels in Y. Used to split the data used during classification into train and test subsets.
sample.split( Y, SplitRatio = 2/3, group = NULL )
Y 
Vector of data labels. If there are only a few labels (as is expected) than relative ratio of data in both subsets will be the same. 
SplitRatio 
Splitting ratio:

group 
Optional vector/list used when multiple copies of each sample
are present. In such a case group contains unique sample labels,
marking all copies of the same sample with the same
label, and the function tries to place all copies in either train or test
subset. If provided than has to have the same length as Y . 
Function msc.sample.split
is the old name of the
sample.split
function. To be retired soon.
Returns logical vector of the same length as Y with random
SplitRatio*length(Y)
elements set to TRUE.
Jarek Tuszynski (SAIC) jaroslaw.w.tuszynski@saic.com
sample
function.
group
is used in the same way as f
argument in
split
and INDEX
argument in tapply
library(MASS) data(cats) # load cats data Y = cats[,1] # extract labels from the data msk = sample.split(Y, SplitRatio=3/4) table(Y,msk) t=sum( msk) # number of elements in one class f=sum(!msk) # number of elements in the other class stopifnot( round((t+f)*3/4) == t ) # test ratios # example of using group variable g = rep(seq(length(Y)/4), each=4); g[48]=12; msk = sample.split(Y, SplitRatio=1/2, group=g) table(Y,msk) # try to get correct split ratios ... split(msk,g) # ... while keeping samples with the same group label together # test results print(paste( "All Labels numbers: total=",t+f,", train=",t,", test=",f, ", ratio=", t/(t+f) ) ) U = unique(Y) # extract all unique labels for( i in 1:length(U)) { # check for all labels lab = (Y==U[i]) # mask elements that have label U[i] t=sum( msk[lab]) # number of elements with label U[i] in one class f=sum(!msk[lab]) # number of elements with label U[i] in the other class print(paste( "Label",U[i],"numbers: total=",t+f,", train=",t,", test=",f, ", ratio=", t/(t+f) ) ) } # use results train = cats[ msk,2:3] # use output of sample.split to ... test = cats[!msk,2:3] # create train and test subsets z = lda(train, Y[msk]) # perform classification table(predict(z, test)$class, Y[!msk]) # predicted & true labels # see also LogitBoost example