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I have a dataset arData, which consists of two variables - Loc and Amount. Loc has 3 unique values - loc1, loc2 and loc3. I want to run separate ar models and do n.ahead prediction using predict. But I want to use dlply/ldply here. I know how to run ar but could not think about how to do prediction. For ar, I use

AR = function(x){
    ar(x[,2],aic = TRUE,order.max = 5,demean=T)
}
fitAR = dlply(arData, .(Loc), AR)
p = c() # Order of AR
for (i in 1:S){p[i] = fitAR[[i]]$order}
arResid = matrix(,nrow = T - 2*L, ncol = S)
for (i in 1:S){arResid[,i] = fitAR[[i]]$resid}

How can I se predict in this set-up?

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(removed the tag [ar], as it's for the UNIX archiver utility. Didn't try to retag as I don't know if there's an appropriate tag for what you're doing...) –  Wooble Jul 16 '13 at 12:57
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