SSCM2Shape {sscor} | R Documentation |
Calculation of the shape matrix
Description
SSCM2Shape
transforms the spatial sign covariance matrix of an elliptical distribution into its standardized shape matrix.
Usage
SSCM2Shape(V,itermax=100,tol=10^(-10))
Arguments
V |
(required) p x p matrix representing the theoretical SSCM. |
tol |
(optional) numeric, defines the stopping rule of the approximation procedure, see the help of |
itermax |
(optional) numeric, defines the maximal number of iterations, see the help of |
Details
The calculation consists of three steps. First one calculates eigenvectors and eigenvalues of the SSCM matrix by the function eigen
. Then one determines the eigenvalues of the related Shape matrix using the function evSSCM2evShape
. Finally one expands the eigendecomposition consisting of the eigenvectors of the SSCM and the eigenvalues of the shape matrix. The resulting shape matrix is standardized to have a trace of 1. Note that this procedure only works for elliptical distributions.
Value
p x p symmetric numerical matrix, representing the shape matrix with trace 1, which corresponds to the spatial sign covariance matrix.
References
Dürre, A., Vogel, D., Fried, R. (2015): Spatial sign correlation, Journal of Multivariate Analyis, vol. 135, 89–105. arvix 1403.7635
Dürre, A., Tyler, D. E., Vogel, D. (2016): On the eigenvalues of the spatial sign covariance matrix in more than two dimensions, to appear in: Statistics and Probability Letters. arvix 1512.02863
See Also
Calculating the theoretical shape from the theoretical SSCM SSCM2Shape
Calculating the eigenvalues of the SSCM evShape2evSSCM
Examples
# defining a shape matrix with trace 1
V <- matrix(c(1,0.8,-0.2,0.8,1,0,-0.2,0,1),ncol=3)/3
V
# calculating the related SSCM
SSCM <- Shape2SSCM(V)
# recalculate the shape based on the SSCM
V2 <- SSCM2Shape(SSCM)
V2
# error is negligible
sum(abs(V-V2))