How to keep dropping the first value, until the sum of the vector is less than 20?

I am looking for a function which takes a vector and keeps dropping the first value until the sum of the vector is less than 20. Return the remaining values.

I've tried both a for-loop and while-loop and can't find a solution.

``````vec <- c(3,5,3,4,3,9,1,8,2,5)

short <- function(vec){

for (i in 1:length(vec)){
while (!is.na((sum(vec)) < 20)){
vec <- vec[i+1:length(vec)]
#vec.remove(i)
}
}
``````

The expected output should be: `1,8,2,5` which is less than 20.

Looking at the expected output it looks like you want to drop values until sum of remaining values is less than 20.

We can create a function

``````drop_20 <- function(vec) {
tail(vec, sum(cumsum(rev(vec)) < 20))
}

drop_20(vec)
#[1] 1 8 2 5
``````

Trying it on another input

``````drop_20(1:10)
#[1]  9 10
``````

Breaking down the function, first the `vec`

``````vec = c(3,5,3,4,3,9,1,8,2,5)
``````

We then `rev`erse it

``````rev(vec)
#[1] 5 2 8 1 9 3 4 3 5 3
``````

take cumulative sum over it (`cumsum`)

``````cumsum(vec)
#[1]  3  8 11 15 18 27 28 36 38 43
``````

Find out number of enteries that are less than 20

``````cumsum(rev(vec)) < 20
#[1]  TRUE  TRUE  TRUE  TRUE FALSE FALSE FALSE FALSE FALSE FALSE

sum(cumsum(rev(vec)) < 20)
#[1] 4
``````

and finally subset these last enteries using `tail`.

A slight modification in the code and it should be able to handle `NA`s as well

``````drop_20 <- function(vec) {
tail(vec, sum(cumsum(replace(rev(vec), is.na(rev(vec)), 0)) < 20))
}

vec = c(3, 2, NA, 4, 5, 1, 2, 3, 4, 9, NA, 1, 2)
drop_20(vec)
#[1]  3  4  9 NA  1  2
``````

The logic being we `replace` `NA` with zeroes and then take the `cumsum`

• I think this is the fastest solution so far which of course matters only on a larger vector. – Phann Jan 16 at 7:38
• @Phann or one a large number of small vectors :). – sindri_baldur Jan 16 at 7:39
• FYI, you should also handle NA's somewhere in there. Good idea btw :) – Sotos Jan 16 at 7:48
• I don't know why but when I tried your code, the output is integer(0) – Hanna Dup Jan 16 at 7:51
• @HannaDup must be because of `NA`s you may take a look at the updated answer now. – Ronak Shah Jan 16 at 7:52

You need to remove the first value each time, so your `while` loop should be,

``````while (sum(x, na.rm = TRUE) >= 20) {
x <- x[-1]
}

#[1] 1 8 2 5
``````
• From the OP's post, might look like their actual data has NA's in it? If so, remember to define `sum(x, na.rm = TRUE)` – Khaynes Jan 16 at 7:30
• Good eye! Thanks – Sotos Jan 16 at 7:32
• Not downvoted, but the quadratic behavior (not sure how `x <- x[-1]` behaves in R, so possibly worse) of something that's pretty easy to do linearly might be the reason. – Voo Jan 16 at 14:12
• @Voo I m not sure what you mean by quadratic/linear (I do know the math). I assume that you mean the `while` loop Vs not needing `while`. Even If this is the case, the downvote is still biased as I followed the OPs train of thought in order to show the mistake. It is a bad downvote, however one looks at this. Also `x <- x[-1]` is just removing the first value...no complex behavior – Sotos Jan 16 at 14:17
• @Sotos It's not the while loop per se, but the interaction between sums, while loop and the removal. I would expect "Just removing the first value" to be O(N) assuming an array of kinds which would cause the whole behavior to be O(N^3) instead of O(N). Now I'm not saying that it's always bad (simple code is often fine even if it's orders of magnitudes slower than it has to be), but I can understand why someone would downvote such a solution that doesn't make note of that behavior. – Voo Jan 16 at 14:36

base solution without loops
not my most readable code ever, but it's pretty fast (see benchmarking below)

``````rev( rev(vec)[cumsum( replace( rev(vec), is.na( rev(vec) ), 0 ) ) < 20] )
#[1] 1 8 2 5
``````

note: 'borrowed' the `NA`-handling from @Ronak's answer

sample data
`vec = c(3, 2, NA, 4, 5, 1, 2, 3, 4, 9, NA, 1, 2)`

benchmarks

``````microbenchmark::microbenchmark(
Sotos = {
while (sum(vec, na.rm = TRUE) >= 20) {
vec <- vec[-1]
}
},
Ronak = tail(vec, sum(cumsum(replace(rev(vec), is.na(rev(vec)), 0)) < 20)),
Wimpel = rev( rev(vec)[cumsum( replace( rev(vec), is.na( rev(vec) ), 0 ) ) < 20]),
WimpelMarkus = vec[rev(cumsum(rev(replace(vec, is.na(vec), 0))) < 20)]
)

# Unit: microseconds
#         expr      min       lq       mean    median        uq      max neval
#        Sotos 2096.795 2127.373 2288.15768 2152.6795 2425.4740 3071.684   100
#        Ronak   30.127   33.440   42.54770   37.2055   49.4080  101.827   100
#       Wimpel   13.557   15.063   17.65734   16.1175   18.5285   38.261   100
# WimpelMarkus    7.532    8.737   12.60520   10.0925   15.9680   45.491   100
``````
• I think you can save a couple of `rev`'s here: `vec[rev(cumsum(rev(replace(vec, is.na(vec), 0))) < 20)]`. This might give a further speed-up. – markus Jan 16 at 8:31
• @markus you are very very right.. I was a bit too lazy in the copy-pasting I guess... you just reduced execution time with 30-40%! (see updated benchmarks in answer) – Wimpel Jan 16 at 9:13

I would go with `Reduce`

``````vec[Reduce(f = "+", x = vec, accumulate = T, right = T) < 20]
##[1] 1 8 2 5
``````

Alternatively, define Reduce with function `sum` with the conditional argument `na.rm = T` in order to hanlde NAs if desired:

``````vec2 <- c(3, 2, NA, 4, 5, 1, 2, 3, 4, 9, NA, 1, 2)
vec2[Reduce(f = function(a,b) sum(a, b, na.rm = T), x = vec2, accumulate = TRUE, right = T) < 20]
##[1]  3  4  9 NA  1  2
``````

I find the Reduce option to start from right (end of the integer vector), and hence not having to reverse it first, convenient.