11

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.

12

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 reverse 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 NAs 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 NAs you may take a look at the updated answer now. – Ronak Shah Jan 16 at 7:52
7

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
  • 1
    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
  • 2
    @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
6

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
  • 1
    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
  • 1
    @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
1

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.

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