# Cumulative sums over run lengths. Can this loop be vectorized?

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I have a data frame on which I calculate a run length encoding for a specific column. The values of the column, dir, are either -1, 0, or 1.

dir.rle <- rle(df\$dir)

I then take the run lengths and compute segmented cumulative sums across another column in the data frame. I'm using a for loop, but I feel like there should be a way to do this more intelligently.

ndx <- 1
for(i in 1:length(dir.rle\$lengths)) {
l <- dir.rle\$lengths[i] - 1
s <- ndx
e <- ndx+l
tmp[s:e,]\$cumval <- cumsum(df[s:e,]\$val)
ndx <- e + 1
}

The run lengths of dir define the start, s, and end, e, for each run. The above code works but it does not feel like idiomatic R code. I feel as if there should be another way to do it without the loop.

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 can you provide some example data? That will help. – Maiasaura Nov 17 '11 at 17:17 If I misunderstood the structure of your data frame, let me know. You could update your question with the output of dput(yourDataHere). If it's too large, use subset() or head() to make the example an appropriate size. – Chase Nov 17 '11 at 17:18

This can be broken down into a two step problem. First, if we create an indexing column based off of the rle, then we can use that to group by and run the cumsum. The group by can then be performed by any number of aggregation techniques. I'll show two options, one using data.table and the other using plyr.

library(data.table)
library(plyr)
#data.table is the same thing as a data.frame for most purposes
#Fake data
dat <- data.table(dir = sample(-1:1, 20, TRUE), value = rnorm(20))
dir.rle <- rle(dat\$dir)
#Compute an indexing column to group by
dat <- transform(dat, indexer = rep(1:length(dir.rle\$lengths), dir.rle\$lengths))

#What does the indexer column look like?
dir      value indexer
[1,]   1  0.5045807       1
[2,]   0  0.2660617       2
[3,]   1  1.0369641       3
[4,]   1 -0.4514342       3
[5,]  -1 -0.3968631       4
[6,]  -1 -2.1517093       4

#data.table approach
dat[, cumsum(value), by = indexer]

#plyr approach
ddply(dat, "indexer", summarize, V1 = cumsum(value))
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 Any incidcation of the speed difference between plyr and data.table? – Paul Hiemstra Nov 17 '11 at 18:08 Some shameless selfpromotion :). On my blog I posted a post that compares ave, ddply and data.table: numbertheory.nl/2011/10/28/… – Paul Hiemstra Nov 17 '11 at 18:15 @paul - my intuition seems to bear out your blog post. Data.table has been the quickest by many magnitudes in most cases when N becomes large. I'm more comfortable with plyr, but have been refactoring the bottlenecks lately. – Chase Nov 17 '11 at 20:14 Hadley Wickham (plyr author) responded to the code example in my post by saying that a new version of plyr would use speed enhancements like data.table. So maybe not to long from now the speed difference is going to be solved :). – Paul Hiemstra Nov 17 '11 at 22:21

Both Spacedman & Chase make the key point that a grouping variable simplifies everything (and Chase lays out two nice ways to proceed from there).

I'll just throw in an alternative approach to forming that grouping variable. It doesn't use rle and, at least to me, feels more intuitive. Basically, at each point where diff() detects a change in value, the cumsum that will form your grouping variable is incremented by one:

df\$group <- c(0, cumsum(!(diff(df\$dir)==0)))

# Or, equivalently
df\$group <- c(0, cumsum(as.logical(diff(df\$dir))))
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Add a 'group' column to the data frame. Something like:

df=data.frame(z=rnorm(100)) # dummy data
df\$dir = sign(df\$z) # dummy +/- 1
rl = rle(df\$dir)
df\$group = rep(1:length(rl\$lengths),times=rl\$lengths)

then use tapply to sum within groups:

tapply(df\$z,df\$group,sum)
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Good, except I think the OP wanted cumulative sums that start over within each group (rather than the groupwise totals). – Josh O'Brien Nov 17 '11 at 17:36
which is why we like reproducible examples in questions :) In truth he was pretty close. – Spacedman Nov 17 '11 at 17:49
Hallelujah, brother! I've also wished for a feature that ran paste([r], title_of_question) through StackOverflow's search engine, and returned results before offering the "Submit" button. That would be esp useful for thinning out questions involving "digits", "round*, and "NA"! (Not a complaint about the current question, which was interesting and showed plenty of thought prior to posting). – Josh O'Brien Nov 17 '11 at 18:01