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Suppose I have an array of M elements, all numbers, negative or positive or zero.

Can anyone suggest an algorithm to select N elements from the array, such that the sum of these N elements is the smallest possible positive number?

Take this array for example:

-1000,-700,-400,-200,-100,-50,10,100,300,600,800,1200

Now I have to select any 5 elements such that their sum is the smallest possible positive number.

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can you please add more information? What are the limits for N, M and the numbers? –  Ivaylo Strandjev Jun 27 '13 at 17:17
    
Updated the main post, thanks :) –  Shubham Gupta Jun 27 '13 at 17:20
    
no you did not add any constraints. I need to know what are the maximum allowed values of N, M and the numbers so that I know what is the needed computational complexity of the solution. –  Ivaylo Strandjev Jun 27 '13 at 17:21
    
Not much, within easy computational range, take for example, N and M cannot exceed 10000. That is also on a higher limit. –  Shubham Gupta Jun 27 '13 at 17:22
1  
Sounds similar to the subset sum problem. –  Dukeling Jun 28 '13 at 12:52

6 Answers 6

Formulation

For i = 1, ..., M:

  • Let a_i be the ith number in your list of candidates
  • Let x_i denote whether the ith number is included in your set of N chosen numbers

Then you want to solve the following integer programming problem.

minimize: sum(a_i * x_i)
with respect to: x_i
subject to:
    (1) sum(a_i * x_i) >= 0
    (2) sum(x_i) = N
    (3) x_i in {0, 1}

You can apply an integer program solver "out of the box" to this problem to find the optimal solution or a suboptimal solution with controllable precision.

Resources

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Here's something sub optimal in Haskell, which (as with many of my ideas) could probably be further and better optimized. It goes something like this:

  1. Sort the array (I got interesting results by trying both ascending and descending)
  2. B N = first N elements of the array
  3. B (i), for i > N = best candidate; where (assuming integers) if they are both less than 1, the candidates are compared by the absolute value of their sums; if they are both 1 or greater, by their sums; and if only one candidate is greater than 0 then that candidate is chosen. If a candidate's sum is 1, return that candidate as the answer. The candidates are:
      B (i-1), B (i-1)[2,3,4..N] ++ array [i], B (i-1)[1,3,4..N] ++ array [i]...B (i-1)[1,2..N-1] ++ array [i]
      B (i-2)[2,3,4..N] ++ array [i], B (i-2)[1,3,4..N] ++ array [i]...B (i-2)[1,2..N-1] ++ array [i]
      ...
      B (N)[2,3,4..N] ++ array [i], B (N)[1,3,4..N] ++ array [i]...B (N)[1,2..N-1] ++ array [i]

Note that for the part of the array where the numbers are negative (in the case of ascending sort) or positive (in the case of descending sort), step 3 can be done immediately without calculations.

Output:

*Main> least 5 "desc" [-1000,-700,-400,-200,-100,-50,10,100,300,600,800,1200]
(10,[-1000,600,300,100,10])
(0.02 secs, 1106836 bytes)

*Main> least 5 "asc" [-1000,-700,-400,-200,-100,-50,10,100,300,600,800,1200]
(50,[300,100,-200,-100,-50])
(0.02 secs, 1097492 bytes)

*Main> main -- 10000 random numbers ranging from -100000 to 100000
(1,[-106,4,-40,74,69])
(1.77 secs, 108964888 bytes)

Code:

import Data.Map (fromList, insert, (!))
import Data.List (minimumBy,tails,sort)
import Control.Monad.Random hiding (fromList)

array = [-1000,-700,-400,-200,-100,-50,10,100,300,600,800,1200]

least n rev arr = comb (fromList listStart) [fst (last listStart) + 1..m]
 where
  m = length arr
  r = if rev == "asc" then False else True
  sorted = (if r then reverse else id) (sort arr)
  listStart = if null lStart 
                 then [(n,(sum $ take n sorted,take n sorted))] 
                 else lStart
  lStart = zip [n..] 
         . takeWhile (all (if r then (>0) else (<0)) . snd) 
         . foldr (\a b -> let c = take n (drop a sorted) in (sum c,c) : b) [] 
         $ [0..]
  s = fromList (zip [1..] sorted)
  comb list [] = list ! m
  comb list (i:is)
    | fst (list ! (i-1)) == 1 = list ! (i-1)
    | otherwise              = comb updatedMap is 
   where updatedMap = insert i bestCandidate list 
         bestCandidate = comb' (list!(i - 1)) [i - 1,i - 2..n] where
           comb' best []     = best
           comb' best (j:js)
             | fst best == 1 = best
             | otherwise     =    
                 let s' = map (\x -> (sum x,x))
                        . (take n . map (take (n - 1)) . tails . cycle) 
                        $ snd (list!j)
                     t = s!i
                     candidate = minimumBy compare' (map (add t) s')
                 in comb' (minimumBy compare' [candidate,best]) js
  add x y@(a,b) = (x + a,x:b)
  compare' a@(a',_) b@(b',_) 
    | a' < 1    = if b' < 1 then compare (abs a') (abs b') else GT
    | otherwise = if b' < 1 then LT else compare a' b'

rnd :: (RandomGen g) => Rand g Int
rnd = getRandomR (-100000,100000)

main = do
  values <- evalRandIO (sequence (replicate (10000) rnd))
  putStrLn (show $ least 5 "desc" values)
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I suppose Kadane’s Algorithm would do the trick, although it is for the maximum sum but I have also implemented it to find the minimum sum, though can't find the code right now.

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I don't think so. Here you may need to first increase and then decrease the accumulated sum, –  Ivaylo Strandjev Jun 27 '13 at 17:19
    
True, the largest sum cannot be turned into least positive sum that way :) –  Shubham Gupta Jun 27 '13 at 17:21

Let initial array be shorted already, or i guess this will work even when it isnt shorted..
N -> Length of array
M -> Element req.
R[] -> Answer
TEMP[] -> For calculations
minSum -> minSum
A[] -> Initial input

All above variables are globally defined

int find(int A[],int start,int left)
{
    if(left=0)
    {
        //sum elements in TEMP[] and save it as curSum
        if(curSum<minSum)
        {
        minSum=curSum;
        //assign elements from TEMP[] to R[] (i.e. our answer)      
        }
    }

    for(i=start;i<=(N-left);i++)
    {
        if(left==M)
            curSum=0;
        TEMP[left-1]=A[i];
        find(A[],i+1,left-1);
    }
}

// Made it in hurry so maybe some error would be existing..

Working solution on ideone : http://ideone.com/YN8PeW

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Now available on ideone.com with proper program : ideone.com/YN8PeW... Answer to your test case from my program : 800 600 10 -400 -1000 :) Hope this will make this question as solved for sure.. –  skbly7 Jun 27 '13 at 19:42
    
Well, this is a brute force, won't help me :) –  Shubham Gupta Jun 28 '13 at 18:45

If you want to find the best possible solution, you can simply use brute force ie. try all posible combinations of fiwe numbers.

Something like this very quick and dirty algorithm:

public List<Integer> findLeastPositivSum(List<Integer> numbers) {
    List<Integer> result;
    Integer resultSum;
    List<Integer> subresult, subresult2, subresult3, subresult4, subresult5;
    for (int i = 0; i < numbers.size() - 4; i++) {
        subresult = new ArrayList<Integer>();
        subresult.add(numbers.get(i));
        for (int j = i + 1; j < numbers.size() - 3; j++) {
            subresult2 = new ArrayList<Integer>(subresult);
            subresult2.add(j);
            for (int k = j + 1; k < numbers.size() - 2; k++) {
                subresult3 = new ArrayList<Integer>(subresult2);
                subresult3.add(k);
                for (int l = k + 1; l < numbers.size() - 1; l++) {
                    subresult4 = new ArrayList<Integer>(subresult3);
                    subresult4.add(k);
                    for (int m = l + 1; m < numbers.size(); m++) {
                        subresult5 = new ArrayList<Integer>(subresult4);
                        subresult5.add(k);
                        Integer subresultSum = sum(subresult5);
                        if (subresultSum > 0) {
                            if (result == null || resultSum > subresultSum) {
                                result = subresult;
                            }
                        }
                    }
                }
            }
        }
    }
    return result;
}

public Integer sum(List<Integer> list) {
    Integer result = 0;
    for (Integer integer : list) {
        result += integer;
    }
    return result;
}

This is really quick and dirty algorithm, it can be done more elegantly. I can provide cleaner algorithm e.g. using recursion.

It can be also further optimized. E.g. you can remove similar numbers from input list as first step.

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Sounds good, but when the size would be near 10K elements, out of 9K have to picked up, this would kill the time :) –  Shubham Gupta Jun 27 '13 at 20:25
    
Of course this is bruteforce algorithm with exponential complexity. There is faster algorithm but it will probably give suboptimal results, but it would be much faster. Are you interested in algorithms with possibly suboptimal results? –  Ondrej Bozek Jun 28 '13 at 9:52
    
Yes, I would be happy with an algo which provides sub optimal solution with better time complexity. –  Shubham Gupta Jun 28 '13 at 18:45

Assumption: M is the original array

Pesudocode

 S = sort(M);
 R = [];
 sum = 0;
 for(i=0, i < length(S); i++){
   sum = sum + S[i];
   if(sum < 1){
     R.push(S[i]);
   }else{
     return R;
   }
 }
share|improve this answer
    
Nope, won't work. Check the array here : (-1000,-700,-400,-200,-100,-50,10,100,300,600,800,1200) Now I only want 5 elements, such that sum is least positive. You are not taking the restriction into consideration that number of elements to be picked up should be 5 only ! –  Shubham Gupta Jun 27 '13 at 17:30

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