Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a long data frame with three columns fyear, tic, and dcvt (for fiscal year, ticker, and total convertible debt). There are about 18 fiscal years and a few thousand tickers. I would like to add an indicator variable that is one whenever dcvt goes up from one year to the next.

I tried ddply, but I lost the fyear column and wasn't sure how to get it back.

temp <- data.frame(fyear = rep(1992:2009, 10), tic = rep(letters[1:10], each = 18), dcvt = rnorm(180, 200, 10))
my.fun <- function(x) x <- c(0, ifelse(tail(x, -1) - head(x, -1) > 0, 1, 0))
temp2 <- ddply(temp, "tic", colwise(my.fun, "dcvt"))

I also tried to cast to wide with the reshape2 package, then run for loops, but of course, that took forever.

Is there a way that I can do this quickly? Should I make a wide zoo object then use diff? I would like to avoid passing through a time series, if I can. Thanks!

share|improve this question

2 Answers 2

up vote 5 down vote accepted

using tranform in ddply sometimes help us greatly:

ddply(temp, .(tic), transform, dcvt=c(0, diff(dcvt)>0))
share|improve this answer
Thanks! Rookie mistake; I'd had even seen that transform inside ddply trick on here a few months back! –  Richard Herron Feb 26 '11 at 0:34

ddpy() handles a data set of this size (10^2) quite well. However, for larger datasets and for situations where you don't necessarily need to return a full dataframe, I would consider the following do.call + lapply solution:

my.fun <- function(cur.tic){
  as.numeric(diff(temp$dcvt[temp$tic == cur.tic]) > 0)

do.call("c", lapply(unique(temp$tic), my.fun))

To demonstrate the performance payoffs (unfairly given the vector vs. dataframe issue), I took the OP's sample data, created new data frames of magnitude 10^4, 10^5, and 10^6, and then ran system.time() on @kohske's ddply solution and the solution above:

Original data (10^2):

> system.time(do.call("c", lapply(unique(temp$tic), my.fun)))
   user  system elapsed 
  0.000   0.000   0.003 
> system.time(ddply(temp, .(tic), transform, dcvt=c(0, diff(dcvt)>0)))
   user  system elapsed 
  0.020   0.000   0.013 

10^4 sample data

> system.time(do.call("c", lapply(unique(temp.2$tic), my.fun)))
   user  system elapsed 
  0.000   0.000   0.002 
> system.time(ddply(temp.2, .(tic), transform, dcvt=c(0, diff(dcvt)>0)))
   user  system elapsed 
  0.040   0.000   0.036 

10^5 sample data

> system.time(do.call("c", lapply(unique(temp.3$tic), my.fun)))
   user  system elapsed 
  0.000   0.000   0.004 
> system.time(ddply(temp.3, .(tic), transform, dcvt=c(0, diff(dcvt)>0)))
   user  system elapsed 
  0.270   0.000   0.279 

10^6 sample data

> system.time(do.call("c", lapply(unique(temp.4$tic), my.fun)))
   user  system elapsed 
  0.010   0.000   0.018 
> system.time(ddply(temp.4, .(tic), transform, dcvt=c(0, diff(dcvt)>0)))
   user  system elapsed 
  6.110   0.070   6.186 

Not a gripe about ddply() - rather, just an effort to share some code that I found useful while working on a very similar issue with a much larget dataset recently.

share|improve this answer
Not really a fair comparison given that ddply returns a data frame and your function returns a vector. ave would probably be even faster –  hadley Feb 27 '11 at 5:18
+1 that's a great point, @hadley. I didn't mean my comment as a gripe about ddply so much as an elaboration of an approach that I had found to be very efficient with a pretty large dataset (10^7) that I was working on recently. Editing my answer to clarify this point! –  ashaw Feb 27 '11 at 21:23

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.