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I've Googled around quite a bit and can't find documentation on this. I'm trying to estimate a feasible generalized least squares (FGLS) model on cross-sectional time series data in R. For example:

library(nlme)

foo <- gls(Y ~ factor(panel_ID) + X1 + X2, data = myData, correlation=corARMA(p=1), method='ML', na.action=na.pass)

When I run this (my data frame is quite large, which is why I don't include it here), I get the following error:

Error in array(c(X, y), c(N, ncol(X) + 1), list(row.names(dataMod), c(colnames(X), : length of 'dimnames' [1] not equal to array extent

Is anyone familiar enough with the internal workings of gls or the nlme package in general to tell me what I'm doing wrong here? Or suggest another way to go about this (I've also tried the plm package)?

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I would try it on a subset of your data that doesn't contain NA values ... –  Ben Bolker Mar 7 '12 at 13:52
    
@BenBolker Thanks, it's running now. Looks like it'll take a long time to converge, but at least it started. –  Matt Mar 7 '12 at 18:01
    
If that turns out to work you are encouraged to post an answer to your own question, to help future readers find the answer to the problem ... –  Ben Bolker Mar 7 '12 at 18:44
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