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I would like to see what people use to work with panel data in R with large datasets (ie 50 mil + obs): the data.table package is useful in that it has keys and is very fast. The xts package is useful because it has facilities for doing all sorts of time series stuff. Therefore, it seems there are two good options:

  1. have a data.table and write custom time series functions to work on that
  2. have a list of xts objects and run lapply on that list every time you want to do something. eventually this will need to be merged into a data.frame to do regressions etc.

I am aware of the plm package but have not found it as useful for data management as the two options above. What do you guys use? Any ideas on what works best when?

Let me propose a scenario: imagine having N firms with T time periods, where N>>0 and T>>0. data.table will be super fast if I want to lag each firm by 1 time period, for example:

x <- data.table(id=1:10, dte=rep(seq(from=as.Date("2012-01-01"), to=as.Date("2012-01-10"), by="day"), each=10), val=1:100, key=c("id", "dte"))
x[,lag_val:=c(NA, head(val, -1)),by=id]

Another way to do this might be:

y <- lapply(ids, function(i) {xts(x[id==i, val], order.by=x[id == i, dte])})
y <- lapply(y, function(obj) { cbind(obj, lag(obj, 1)) })

The advantage of the former is it's speed with big data. The advantage of the latter is the ability to do things like period.apply and use other functionality of xts. Are there tricks to making the xts representation faster? Maybe a combination of the two? Converting from and to xts objects is costly, it seems.

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closed as not constructive by Matt Dowle, GSee, joran, mnel, Andy Hayden Nov 6 '12 at 0:43

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Could you clarify what you mean with an example? –  Matt Dowle Nov 2 '12 at 21:56
@MatthewDowle: sure, let me think of something and I'll post it up! –  Alex Nov 2 '12 at 22:19
Why not have each firm be a column? XTS <- xts(matrix(1:100, ncol=10), rep(seq(from=as.Date("2012-01-01"), to=as.Date("2012-01-10"), by="day"))); lag(XTS). I don't see why you need to convert to a data.frame ever. some models are slower on xts than matrix, but I don't think as.matrix costs you anything (if it does, I think you can just borrow setattr from data.table) –  GSee Nov 4 '12 at 21:28
@MatthewDowle: i think my question is fairly clear. if one wants to work with panel data, is option 1 or 2 the best? or is there another? –  Alex Nov 5 '12 at 18:13
I still think this question is pretty important. Panel data is everywhere in some fields - and R hardly supports it. It would be great to have a discussion about it somewhere. I asked a bunch of specific questions : stackoverflow.com/questions/26171958/…, stackoverflow.com/questions/25649056/… stackoverflow.com/questions/25694940/… –  Matthew Oct 21 '14 at 18:09

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