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I am trying to use [r] to run plm on two large datasets, one with 400K obs and the other with 1.1 million. I can run the smaller in SAS but the larger doesn't work. I was trying to see if I could use [r] and when I try to run the code below it always comes back as follows:

> pvlag<-read.csv(file="pvlag.csv", sep=",")
>  pvpanel<-plm.data(pvlag, c("New_ID", "billmo"))
 pv<-plm(usetotl~livgarea+yardarea+poolsize+lagavg+lat1+nonlat1+grad+grad,data=pvpanel, model="random", random.method=("swar"), index=c("New_ID", "billmo")) 

series are constants and have been removed Error in solve.default(crossprod(X.m)) : system is computationally singular: reciprocal condition number = 6.47315e-22

This happens with both data sets, even though when i run the smaller one in SAS it outputs estimated coefficients etc without issue. Does anyone have any idea why this is happening? Also, since I am running a random effects model why would cosntant values be removed? I thought that was only an issue with fixed effects models?

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Looking at your call I see "grad+grad" in your formula, was that intentional? – Brandon Bertelsen Apr 2 '12 at 19:37
1  
It would be helpful if you submit some sample data so we can reproduce the problem. I myself often realize what I overlooked when I do this. – Eric Fail Apr 3 '12 at 0:43
    
Please let us know if this question has been answered appropriately - feel free to write in an answer yourself and check it off. Thanks for asking a question about plm(), also. – Jack Ryan Nov 2 '13 at 22:48

For me, I had fallen into the dummy trap when I got this error. Isn't that your case too?

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you used the variable grad twice. it also happens if you are using dummy variables which would produce 1s over the whole sample, say you have two dummy variables, the first one has a 1 for the first 200K, and the second has a one for the second 200K. you can't use both. you have to choose one - but it does not matter which one.

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