corpcor (version 1.6.9)

rebuild.cov: Rebuild and Decompose the (Inverse) Covariance Matrix

Description

rebuild.cov takes a correlation matrix and a vector with variances and reconstructs the corresponding covariance matrix.

Conversely, decompose.cov decomposes a covariance matrix into correlations and variances.

decompose.invcov decomposes a concentration matrix (=inverse covariance matrix) into partial correlations and partial variances.

rebuild.invcov takes a partial correlation matrix and a vector with partial variances and reconstructs the corresponding concentration matrix.

Usage

rebuild.cov(r, v)
rebuild.invcov(pr, pv)
decompose.cov(m)
decompose.invcov(m)

Arguments

r

correlation matrix

v

variance vector

pr

partial correlation matrix

pv

partial variance vector

m

a covariance or a concentration matrix

Value

rebuild.cov and rebuild.invcov return a matrix.

decompose.cov and decompose.invcov return a list containing a matrix and a vector.

Details

The diagonal elements of the concentration matrix (=inverse covariance matrix) are the precisions, and the off-diagonal elements are the concentrations. Thus, the partial variances correspond to the inverse precisions, and the partial correlations to the negative standardized concentrations.

See Also

cor, cov, pcor.shrink

Examples

Run this code
# NOT RUN {
# load corpcor library
library("corpcor")

# a correlation matrix and some variances
r = matrix(c(1, 1/2, 1/2, 1),  nrow = 2, ncol=2)
r
v = c(2, 3)

# construct the associated covariance matrix
c = rebuild.cov(r, v)
c

# decompose into correlations and variances
decompose.cov(c)


# the corresponding concentration matrix
conc = pseudoinverse(c) 
conc

# decompose into partial correlation matrix and partial variances
tmp = decompose.invcov(conc)
tmp
# note: because this is an example with two variables,
# the partial and standard correlations are identical!


# reconstruct the concentration matrix from partial correlations and
# partial variances 
rebuild.invcov(tmp$pr, tmp$pv)

# }

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