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VGAM (version 0.8-2)

rrar: Nested reduced-rank autoregressive models for multiple time series

Description

Estimates the parameters of a nested reduced-rank autoregressive model for multiple time series.

Usage

rrar(Ranks = 1, coefstart = NULL)

Arguments

Ranks
Vector of integers: the ranks of the model. Each value must be at least one and no more than M, where M is the number of response variables in the time series. The length of Ranks is the lag, which is
coefstart
Optional numerical vector of initial values for the coefficients. By default, the family function chooses these automatically.

Value

  • An object of class "vglmff" (see vglmff-class). The object is used by modelling functions such as vglm and vgam.

Details

Full details are given in Ahn and Reinsel (1988). Convergence may be very slow, so setting maxits=50, say, may help. If convergence is not obtained, you might like to try inputting different initial values.

Setting trace=TRUE in vglm is useful for monitoring the progress at each iteration.

References

Ahn, S. and Reinsel, G. C. (1988) Nested reduced-rank autoregressive models for multiple time series. Journal of the American Statistical Association, 83, 849--856.

Documentation accompanying the VGAM package at http://www.stat.auckland.ac.nz/~yee contains further information and examples.

See Also

vglm, usagrain.

Examples

Run this code
year = seq(1961+1/12, 1972+10/12, by=1/12)
par(mar=c(4,4,2,2)+0.1, mfrow=c(2,2))
for(ii in 1:4) {
    plot(year, usagrain[,ii], main=names(usagrain)[ii],
         type="l", xlab="", ylab="")
    points(year, usagrain[,ii], pch="*")
}
apply(usagrain, 2, mean)     # mu vector
cgrain = scale(usagrain, scale=FALSE) # Center the time series only
fit = vglm(cgrain ~ 1, rrar(Ranks=c(4,1)), trace=TRUE)
summary(fit)

print(fit@misc$Ak1, dig=2)
print(fit@misc$Cmatrices, dig=3)
print(fit@misc$Dmatrices, dig=3)
print(fit@misc$omegahat, dig=3)
print(fit@misc$Phimatrices, dig=2)

par(mar=c(4,4,2,2)+0.1, mfrow=c(4,1))
for(ii in 1:4) {
    plot(year, fit@misc$Z[,ii], main=paste("Z", ii, sep=""),
         type="l", xlab="", ylab="")
    points(year, fit@misc$Z[,ii], pch="*")
}

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