pcaCoDa: Robust principal component analysis for compositional data
Description
This function applies robust principal component analysis for compositional data.
Usage
pcaCoDa(x, method = "robust", mult_comp=NULL)
Arguments
x
compositional data
method
either robust (default) or standard
mult_comp
a list of numeric vectors holding the indices of linked compositions
Value
scoresscores in clr space
loadingsloadings in clr space
eigenvalueseigenvalues of the clr covariance matrix
methodmethod
princompOutputClroutput of princomp needed in plot.pcaCoDa
Details
The compositional data set is transformed using the ilr tranformation.
Afterwards, robust principal component analysis is performed.
Resulting loadings and scores are back-transformed to the clr space where
the compositional biplot can be shown.
mult_comp is used when there are more than one group of compositional parts in the data.
To give an illustrative example, lets assume that one variable group measures angles of the inner ear-bones
of animals which sum up to 100 and another one having percentages of a whole on
the thickness of the inner ear-bones included. Then two groups of variables exists which are both compositional parts.
The ilr-transformation is then internally applied to each group independently whenever the mult_comp is set
correctly.
References
Filzmoser, P., Hron, K., Reimann, C. (2009)
Principal Component Analysis for Compositional Data with Outliers. Environmetrics, 20, 621-632.
data(expenditures)
p1 <- pcaCoDa(expenditures)
p1
plot(p1)
## just for illustration how to set the mult_comp argumentp1 <- pcaCoDa(expenditures, mult_comp=list(c(1,2,3),c(4,5)))