# Conditional Cumulative Sum in R

I have a time series data frame and want to compute cumulative returns for stock symbols intra-day for a range of dates. When the symbol and/or date changes the cumulative return should reset. Any help would be appreciated. A small sample of my data frame is below including what the cumulative sum column should return. Thanks.

``````       Date Symbol  Time   Last Return Cumulative.Sum
1  1/2/2013     AA  9:30  42.00    n/a            n/a
2  1/2/2013     AA 12:00  42.50  1.19%          1.19%
3  1/2/2013     AA 16:00  42.88  0.89%          2.08%
4  1/2/2013   AAPL  9:30 387.00    n/a            n/a
5  1/2/2013   AAPL 12:00 387.87  0.22%          0.22%
6  1/2/2013   AAPL 16:00 388.69  0.21%          0.44%
7  1/3/2013     AA  9:30  42.88    n/a            n/a
8  1/3/2013     AA 12:00  42.11 -1.80%         -1.80%
9  1/3/2013     AA 16:00  41.89 -0.52%         -2.32%
``````
-
I hope these are log returns... – flodel May 24 '13 at 19:01
In the sample data I posted, no. In my real data frame, yes log returns – David May 24 '13 at 19:04

using the `data.table` package this is trivial. If your data is in a `data.frame` called `dat`:

``````library(data.table)
DT <- data.table(dat)

DT[, your_cumsum_function(.SD), by=c('Date', 'Symbol')]
``````

Where `.SD` is the subset of the `data.table` defined by the `by` groups. See `?data.table` for more information.

You can also pass column names directly:

``````DT[, your_cumsum_function(Last), by=c('Date', 'Symbol')]
``````

``````DT[, Return := as.numeric(sub('%\$', '', Return))]
DT[!is.na(Return), Cumulative.Sum := cumsum(Return), by = c('Date', 'Symbol')]
``````
-
Thanks for the response – David May 24 '13 at 19:06

This is a typical case for the split-apply-combine strategy: You split your `data.frame` by unique combinations of certain columns (Date and Symbol), apply a procedure on the subset (`cumsum` on Return ) and combine the subsets back to a large `data.frame`. This can be achieved easily with `ddply`from the `plyr` package:

``````mdf\$Return <- as.numeric(sub( "(\\d+\\.\\d+)\\%", "\\1", mdf\$Return ))
mdf\$Return[ is.na(mdf\$Return) ] <- 0

library(plyr)
ddply(mdf, .(Date,Symbol), transform, Cumulative.Sum = cumsum(Return))

Date Symbol  Time   Last Return Cumulative.Sum
1 1/2/2013     AA  9:30  42.00   0.00           0.00
2 1/2/2013     AA 12:00  42.50   1.19           1.19
3 1/2/2013     AA 16:00  42.88   0.89           2.08
4 1/2/2013   AAPL  9:30 387.00   0.00           0.00
5 1/2/2013   AAPL 12:00 387.87   0.22           0.22
6 1/2/2013   AAPL 16:00 388.69   0.21           0.43
7 1/3/2013     AA  9:30  42.88   0.00           0.00
8 1/3/2013     AA 12:00  42.11  -1.80          -1.80
9 1/3/2013     AA 16:00  41.89  -0.52          -2.32
``````
-
Thanks for the help! – David May 24 '13 at 19:05