# Calculate cumsum() while ignoring NA values

Consider the following named vector `x`.

``````( x <- setNames(c(1, 2, 0, NA, 4, NA, NA, 6), letters[1:8]) )
# a  b  c  d  e  f  g  h
# 1  2  0 NA  4 NA NA  6
``````

I'd like to calculate the cumulative sum of `x` while ignoring the `NA` values. Many R functions have an argument `na.rm` which removes `NA` elements prior to calculations. `cumsum()` is not one of them, which makes this operation a bit tricky.

I can do it this way.

``````y <- setNames(numeric(length(x)), names(x))
z <- cumsum(na.omit(x))
y[names(y) %in% names(z)] <- z
y[!names(y) %in% names(z)] <- x[is.na(x)]
y
# a  b  c  d  e  f  g  h
# 1  3  3 NA  7 NA NA 13
``````

But this seems excessive, and makes a lot of new assignments/copies. I'm sure there's a better way.

What better methods are there to return the cumulative sum while effectively ignoring `NA` values?

You can do this in one line with:

``````cumsum(ifelse(is.na(x), 0, x)) + x*0
#  a  b  c  d  e  f  g  h
#  1  3  3 NA  7 NA NA 13
``````

Or, similarly:

``````library(dplyr)
cumsum(coalesce(x, 0)) + x*0
#  a  b  c  d  e  f  g  h
#  1  3  3 NA  7 NA NA 13
``````
• what does `x*0` do here? Commented Mar 26, 2019 at 18:00
• @Denis `x*0` takes value `NA` if the value in `x` is missing and otherwise takes value 0. So adding `x*0` basically just replaces by `NA` whenever the original value was missing. Commented Mar 26, 2019 at 18:37

It's an old question but `tidyr` gives a new solution. Based on the idea of replacing `NA` with zero.

``````require(tidyr)

cumsum(replace_na(x, 0))

a  b  c  d  e  f  g  h
1  3  3  3  7  7  7 13
``````
• This includes the zero in the calculation of the mean, but I think the post said that he wanted to ignore those values in the calculation. Both things are different. Commented May 27, 2019 at 20:49

Do you want something like this:

``````x2 <- x
x2[!is.na(x)] <- cumsum(x2[!is.na(x)])

x2
``````

 Alternatively, as suggested by a comment above, you can change NA's to 0's -

``````miss <- is.na(x)
x[miss] <- 0
cs <- cumsum(x)
cs[miss] <- NA
# cs is the requested cumsum
``````
• one-liner doing the same thing: `"[<-"(x, !is.na(x), cumsum(na.omit(x)))` Commented Aug 30, 2014 at 18:24
• Isn't the more readable version of the same thing `x[!is.na(x)] <- cumsum(na.omit(x))`? Commented Aug 31, 2014 at 0:38
• It's more readable but it's not the same thing. `"[<-"(x, bla...` does what OP asked without changing x, your version does subset assignment on x and returns `cumsum(na.omit(x))`. So it's by far not the same thing. - A more readable version of the one-liner, doing the same thing, would be this: `replace(x, !is.na(x), cumsum(na.omit(x)))` Commented Sep 1, 2014 at 6:41

Here's a function I came up from the answers to this question. Thought I'd share it, since it seems to work well so far. It calculates the cumulative `FUNC` of `x` while ignoring `NA`. `FUNC` can be any one of `sum()`, `prod()`, `min()`, or `max()`, and `x` is a numeric vector.

``````cumSkipNA <- function(x, FUNC)
{
d <- deparse(substitute(FUNC))
funs <- c("max", "min", "prod", "sum")
stopifnot(is.vector(x), is.numeric(x), d %in% funs)
FUNC <- match.fun(paste0("cum", d))
x[!is.na(x)] <- FUNC(x[!is.na(x)])
x
}

set.seed(1)
x <- sample(15, 10, TRUE)
x[c(2,7,5)] <- NA
x
# [1]  4 NA  9 14 NA 14 NA 10 10  1
cumSkipNA(x, sum)
# [1]  4 NA 13 27 NA 41 NA 51 61 62
cumSkipNA(x, prod)
# [1]      4     NA     36    504     NA   7056     NA
# [8]  70560 705600 705600
cumSkipNA(x, min)
# [1]  4 NA  4  4 NA  4 NA  4  4  1
cumSkipNA(x, max)
# [1]  4 NA  9 14 NA 14 NA 14 14 14
``````

Definitely nothing new, but maybe useful to someone.

• it's very useful to have a general use function like this - great Commented Sep 3, 2014 at 1:47

Another option is using the `collapse` package with `fcumsum` function like this:

``````( x <- setNames(c(1, 2, 0, NA, 4, NA, NA, 6), letters[1:8]) )
#>  a  b  c  d  e  f  g  h
#>  1  2  0 NA  4 NA NA  6
library(collapse)
fcumsum(x)
#>  a  b  c  d  e  f  g  h
#>  1  3  3 NA  7 NA NA 13
``````

Created on 2022-08-24 with reprex v2.0.2

Benchmarking several options. `collapse::fcumsum` is the fastest by far.

``````library(dplyr)
library(tidyr)
library(collapse)

x <- runif(1e5)
x[sample(1e5, 1e4)] <- NA

microbenchmark::microbenchmark(
ifelse = cumsum(ifelse(is.na(x), 0, x)) + x*0,
coalesce = cumsum(coalesce(x, 0)) + x*0,
na.omit = "[<-"(x, !is.na(x), cumsum(na.omit(x))),
is.na = local({b <- !is.na(x); "[<-"(x, b, cumsum(x[b]))}),
fcumsum = fcumsum(x),
check = "equal"
)
#> Unit: microseconds
#>      expr    min      lq     mean  median      uq    max neval
#>    ifelse 1808.4 2672.40 3290.323 2853.80 3178.25 8807.5   100
#>  coalesce 2575.8 3543.45 4427.820 3890.20 5344.55 8142.4   100
#>   na.omit 1314.6 2056.25 2547.983 2231.50 2467.40 6259.2   100
#>     is.na  910.5 1472.50 2020.346 1698.80 1955.75 5431.0   100
#>   fcumsum  137.2  255.35  282.999  267.15  313.75  513.4   100
``````