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I have been working with zoo to utilize lagging and differencing for my time series data. I am not working with a panel data set that consists of firm and date. It becomes very cumbersome to lag each firm individually and then merge the results. Are there any good packages that work with panel data in R? I am aware of plm currently. Others? plm has the weird issue that the lag order (ie -1 vs +1) is exactly opposite of zoo and ts and thus I foresee headaches ahead. Any packages that anyone like?

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up vote 1 down vote accepted

The ddply function, in the plyr package, usually makes this kind of operation painless (but it can be slow on large datasets).

# Sample data
library(quantmod)
d <- NULL
for(s in c("^GSPC","^N225")) {
  tmp <- getSymbols(s,auto.assign=FALSE)
  tmp <- Ad(tmp)
  names(tmp) <- "price"
  tmp <- data.frame( date=index(tmp), id=s, price=coredata(tmp) )
  d[[s]] <- tmp
}
d <- do.call(rbind, d)
rownames(d) <- NULL

# Sample computations: lag the prices and compute the logarithmic returns
library(plyr)
d <- ddply(
  d, "id", 
  mutate,
  previous_price = lag(xts(price,date)),
  log_return = log(price / previous_price)
) 
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1  
ddply can be quite fast! You can use its parallel computing functionality with library(doMC) registerDoMC(2) And adding the .parallel=T argument You can track progress with .progress="text" – Etienne Low-Décarie Mar 21 '12 at 11:35
1  
@EtienneLow-Décarie: What can be slow (and I think this part cannot be parallelized) is splitting the data.frame into many smaller data.frames. My situation looked like this (1 million rows, 100,000 groups with 1 to 1000 elements in each, with a user-defined function instead of max): d <- data.frame(g=round(1e5*rlnorm(1e6)),x=runif(1e6)); d1 <- ddply(d,"g",summarize,max(x)). The following is much faster: d2 <- sqldf("SELECT g, MAX(x) FROM d GROUP BY g"). – Vincent Zoonekynd Mar 21 '12 at 12:07
    
could you please describe more about the parallel computing infrastructure? – Alex Mar 21 '12 at 12:30
    
i am currently using plyr to do this stuff and it is painfully slow because i have a large data set (about 4 mil rows, 1000 groups) – Alex Mar 21 '12 at 12:31

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