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fastSOM (version 1.0.1)

sot: Calculation of Spillover Tables

Description

This function calculates an \(N x N\)-dimensional spillover table.

Usage

sot(Sigma, A, ncores = 1, ...)

Arguments

Sigma

Either a covariance matrix or a list thereof.

A

Either a 3-dimensional array with A[,,h] being MA coefficient matrices of the same dimension as Sigma or a list thereof.

ncores

Number of cores, only relevant if Sigma is a list of matrices. Missing ncores or ncores=1 means no parallelization (just one core is used). ncores=0 means automatic detection of the number of available cores. Any other integer determines the maximal number of cores to be used.

Further arguments, especially perm which is used to reorder variables. If perm is missing, then the original ordering of the model variables will be used. If perm is a permutation of 1:N, then the spillover index for the model with variables reordered according to perm will be calculated.

Value

Matrix, or a list thereof, of dimensions \(N x N\) with non-negative entries summing up to 100 for each row.

Details

The \((i,j)\)-entry of a spillover table represents the relative contribution of shocks in variable \(j\) (the column variable) to the forecasting error variance of variable \(i\) (the row variable). Hence, off-diagonal values are interpreted as spillovers, while the own variance shares appear on the diagonal. An overall spillover measure is given by soi.

The typical application of the 'list' version of sot is a rolling windows approach when Sigma and A are lists representing the corresponding quantities at different points in time (rolling windows).

References

[1] Diebold, F. X. and Yilmaz, K. (2009): Measuring financial asset return and volatitliy spillovers, with application to global equity markets, Economic Journal 199(534): 158-171.

[2] Kloessner, S. and Wagner, S. (2012): Exploring All VAR Orderings for Calculating Spillovers? Yes, We Can! - A Note on Diebold and Yilmaz (2009), Journal of Applied Econometrics 29(1): 172-179

See Also

fastSOM-package, soi

Examples

Run this code
# NOT RUN {
# generate randomly positive definite matrix Sigma of dimension N 
N <- 10
Sigma <- crossprod(matrix(rnorm(N*N),nrow=N)) 
# generate randomly coefficient matrices
H <- 10 
A <- array(rnorm(N*N*H),dim=c(N,N,H)) 
# calculate spillover table
sot(Sigma,A) 
# }

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