pcalg (version 2.4-5)

pcorOrder: Compute Partial Correlations

Description

This function computes partial correlations given a correlation matrix using a recursive algorithm.

Usage

pcorOrder(i,j, k, C, cut.at = 0.9999999)

Arguments

i,j

(integer) position of variable \(i\) and \(j\), respectively, in correlation matrix.

k

(integer) positions of zero or more conditioning variables in the correlation matrix.

C

Correlation matrix (matrix)

cut.at

Number slightly smaller than one; if \(c\) is cut.at, values outside of \([-c,c]\) are set to \(-c\) or \(c\) respectively.

Value

The partial correlation of i and j given the set k.

Details

The partial correlations are computed using a recusive formula if the size of the conditioning set is one. For larger conditioning sets, the pseudoinverse of parts of the correlation matrix is computed (by pseudoinverse() from package corpcor). The pseudoinverse instead of the inverse is used in order to avoid numerical problems.

See Also

condIndFisherZ for testing zero partial correlation.

Examples

Run this code
# NOT RUN {
## produce uncorrelated normal random variables
mat <- matrix(rnorm(3*20),20,3)
## compute partial correlation of var1 and var2 given var3
pcorOrder(1,2, 3, cor(mat))

## define graphical model, simulate data and compute
## partial correlation with bigger conditional set
genDAG <- randomDAG(20, prob = 0.2)
dat <- rmvDAG(1000, genDAG)
C <- cor(dat)
pcorOrder(2,5, k = c(3,7,8,14,19), C)
# }

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