# Calculate cumulative sums of certain values

Assume you have a data frame like this:

``````df <- data.frame(Nums = c(1,2,3,4,5,6,7,8,9,10), Cum.sums = NA)
> df
Nums Cum.sums
1     1       NA
2     2       NA
3     3       NA
4     4       NA
5     5       NA
6     6       NA
7     7       NA
8     8       NA
9     9       NA
10   10       NA
``````

and you want an output like this:

``````   Nums Cum.sums
1     1        0
2     2        0
3     3        0
4     4        3
5     5        5
6     6        7
7     7        9
8     8       11
9     9       13
10   10       15
``````

The 4. element of the column Cum.sum is the sum of 1 and 2, the 5. element of the Column Cum.sum is the sum of 2 and 3 and so on... This means, I would like to build the cumulative sum of the first row and save it in the second row. However I don't want the normal cumulative sum but the sum of the element 2 rows above the current row plus the element 3 rows above the current row.

I allready tried to play a little bit around with the sum and cumsum function but I failed.

Any ideas?

Thanks!

-

You could use the `embed` function to create the appropriate lags, `rowSums` to sum, then lag appropriately (I used `head`).

``````df\$Cum.sums[-(1:3)] <- head(rowSums(embed(df\$Nums,2)),-2)
``````
-
Thanks Joshua! Works great! –  Hagen Brenner Oct 20 '11 at 14:03

You don't need any special function, just use normal vector operations (these solutions are all equivalent):

``````df\$Cum.sums[-(1:3)] <- head(df\$Nums, -3) + head(df\$Nums[-1], -2)
``````

or

``````with(df, Cum.sums[-(1:3)] <- head(Nums, -3) + head(Nums[-1], -2))
``````

or

``````df\$Cum.sums[-(1:3)] <- df\$Nums[1:(nrow(df)-3)] + df\$Nums[2:(nrow(df)-2)]
``````

I believe the first 3 sums SHOULD be NA, not 0, but if you prefer zeroes, you can initialize the sums first:

``````df\$Cum.sums <- 0
``````
-
While this is a valid solution to this specific problem, it doesn't generalize nicely (e.g. if the cumulative sum was over 20 rows instead of 2). –  Joshua Ulrich Oct 19 '11 at 14:46
@Joshua, you are right, I posted more general solution, but not very practical though. Your solution will probably be the best. –  TMS Oct 19 '11 at 15:13

Another solution, elegant and general, using matrix multiplication - and so very inefficient for large data. So it's not much practical, though a nice excercise:

``````len <- nrow(df)
sr <- 2 # number of rows to sum
lag <- 3
mat <- matrix(