rg.robmva {StatDA} | R Documentation |
Robust Multivariate Analysis
Description
Procedure for multivariate analysis using the minimum volume ellipsoid (MVE), minimum covariance determinant (MCD) or a supplied set of 0-1 weights.
Usage
rg.robmva(x, proc = "mcd", wts = NULL, main = deparse(substitute(x)))
Arguments
x |
data |
proc |
procedure for the estimation (MVE or MCD) |
wts |
if proc=NULL, the supplied weights for the calculation |
main |
input for the list |
Details
cov.mcd is limited to a maximum of 50 variables. Both of these procedures lead to a vector of 0-1 weights and mcd is the default. A set of weights can be generated by using Graphical Adaptive Interactive Trimming (GAIT) procedure available though rg.md.gait(). Using 0-1 weights the parameters of the background distribution are estimated by cov.wt(). A robust estimation of the Mahalanobis distances is made for the total data set but is only undertaken if x is non-singular (lowest eigenvalue is >10e-4).
Value
n |
number of rows |
p |
number of columns |
wts |
the weights for the covariance matrix |
mean |
the mean of the data |
cov |
the covariance |
sd |
the standard deviation |
r |
correlation matrix |
eigenvalues |
eigenvalues of the SVD |
econtrib |
proportion of eigenvalues in % |
eigenvectors |
eigenvectors of the SVD |
rload |
loadings matrix |
rcr |
standardised loadings matrix |
vcontrib |
scores variance |
pvcontrib |
proportion of scores variance in % |
cpvcontrib |
cummulative proportion of scores variance |
md |
Mahalanbois distance |
ppm |
probability for outliegness using F-distribution |
epm |
probability for outliegness using Chisquared-distribution |
Author(s)
Peter Filzmoser <P.Filzmoser@tuwien.ac.at> http://cstat.tuwien.ac.at/filz/
References
C. Reimann, P. Filzmoser, R.G. Garrett, and R. Dutter: Statistical Data Analysis Explained. Applied Environmental Statistics with R. John Wiley and Sons, Chichester, 2008.
Examples
#input data
data(ohorizon)
vegzn=ohorizon[,"VEG_ZONE"]
veg=rep(NA,nrow(ohorizon))
veg[vegzn=="BOREAL_FOREST"] <- 1
veg[vegzn=="FOREST_TUNDRA"] <- 2
veg[vegzn=="SHRUB_TUNDRA"] <- 3
veg[vegzn=="DWARF_SHRUB_TUNDRA"] <- 3
veg[vegzn=="TUNDRA"] <- 3
el=c("Ag","Al","As","B","Ba","Bi","Ca","Cd","Co","Cu","Fe","K","Mg","Mn",
"Na","Ni","P","Pb","Rb","S","Sb","Sr","Th","Tl","V","Y","Zn")
x <- log10(ohorizon[!is.na(veg),el])
v <- veg[!is.na(veg)]
subvar=c("Ag","B","Bi","Mg","Mn","Na","Pb","Rb","S","Sb","Tl")
set.seed(100)
rg.robmva(as.matrix(x[v==1,subvar]))