blockScale {prospectr} | R Documentation |
Hard or soft block scaling of a spectral matrix to constant group variance. In multivariate calibration, block scaling is used to down-weight variables, when one block of variables dominates other blocks. With hard block scaling, the variables in a block are scaled so that the sum of their variances equals 1. Wen soft block scaling is used, the variables are scaled such that the sum of variable variances is equal to the square root of the number of variables in a particular block.
blockScale(X,type='hard',sigma2=1)
X |
|
type |
type of block scaling: 'hard' or 'soft' |
sigma2 |
desired total variance of a block (ie sum
of the variances of all variables, default = 1),
applicable when |
a list
with Xscaled
, the scaled matrix and
f
, the scaling factor
Antoine Stevens
Eriksson, L., Johansson, E., Kettaneh, N., Trygg, J., Wikstrom, C., and Wold, S., 2006. Multi- and Megavariate Data Analysis. MKS Umetrics AB.
blockNorm
,
standardNormalVariate
, detrend
X <- matrix(rnorm(100),ncol=10) # Hard block scaling res <- blockScale(X) apply(res$Xscaled,2,var) # sum of column variances == 1