# algorithm to sum up a list of numbers for all combinations

I have a list of numbers and I want to add up all the different combinations. For example:

• number as 1,4,7 and 13
• the output would be:

``````1+4=5
1+7=8
1+13=14
4+7=11
4+13=17
7+13=20
1+4+7=12
1+4+13=18
1+7+13=21
4+7+13=24
1+4+7+13=25
``````

Is there a formula to calculate this with different numbers?

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Is this Project Euler related? –  Triptych Dec 31 '08 at 19:46
Writing a Kakuro solver (or creator), are you? –  David Dec 31 '08 at 22:35

A simple way to do this is to create a bit set with as much bits as there are numbers. In your example 4.

Then count from 0001 to 1111 and sum each number that has a 1 on the set:

Numbers 1,4,7,13:

``````0001 = 13=13
0010 = 7=7
0011 = 7+13 = 20

1111 = 1+4+7+13 = 25
``````
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Excellent idea, with the note that if you wanted to leave out no sums of just one member, and of no members (such as in the question as you posted it) you have to leave those out (powers of two and zero), i.e. leave out 0000 if you don't want sums of none, and leave out 0001, 0010, 0100, 1000 if you don't want sums of only one. –  John Robertson May 9 '11 at 17:22
Can you please explain a little bit or give a link –  sayem siam May 30 at 11:59

The best-known algorithm requires exponential time. If there were a polynomial-time algorithm, then you would solve the subset sum problem, and thus the P=NP problem.

The algorithm here is to create bitvector of length that is equal to the cardinality of your set of numbers. Fix an enumeration `(n_i)` of your set of numbers. Then, enumerate over all possible values of the bitvector. For each enumeration `(e_i)` of the bitvector, compute the sum of `e_i * n_i`.

The intuition here is that you are representing the subsets of your set of numbers by a bitvector and generating all possible subsets of the set of numbers. When bit `e_i` is equal to one, `n_i` is in the subset, otherwise it is not.

The fourth volume of Knuth's TAOCP provides algorithms for generating all possible values of the bitvector.

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I think the he wants to output every sum. If this is the case, the problem is definitively non polynomial since the output is exponential in relation to the input, and so it doesn't fall into P=NP. –  mweiss Dec 31 '08 at 22:27

Here is a simple recursive Ruby implementation:

``````a = [1, 4, 7, 13]

(idx...ary.length).each do |i|
add(current + [ary[i]], ary, i+1, sum + ary[i])
end
puts "#{current.join('+')} = #{sum}" if current.size > 1
end
``````

Which prints

``````1+4+7+13 = 25
1+4+7 = 12
1+4+13 = 18
1+4 = 5
1+7+13 = 21
1+7 = 8
1+13 = 14
4+7+13 = 24
4+7 = 11
4+13 = 17
7+13 = 20
``````

If you do not need to print the array at each step, the code can be made even simpler and much faster because no additional arrays are created:

``````def add(ary, idx, sum)
(idx...ary.length).each do |i|
end
puts sum
end
``````

I dont think you can have it much simpler than that.

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This Perl program seems to do what you want. It goes through the different ways to choose n items from k items. It's easy to calculate how many combinations there are, but getting the sums of each combination means you have to add them eventually. I had a similar question on Perlmonks when I was asking How can I calculate the right combination of postage stamps?.

The Math::Combinatorics module can also handle many other cases. Even if you don't want to use it, the documentation has a lot of pointers to other information about the problem. Other people might be able to suggest the appropriate library for the language you'd like to you.

```#!/usr/bin/perl

use List::Util qw(sum);
use Math::Combinatorics;

my @n = qw(1 4 7 13);

foreach my \$count ( 2 .. @n ) {
my \$c = Math::Combinatorics->new(
count => \$count,  # number to choose
data => [@n],
);

print "combinations of \$count from: [" . join(" ",@n) . "]\n";

while( my @combo = \$c->next_combination ){
print join( ' ', @combo ), " = ", sum( @combo ) , "\n";
}
}
```
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You can enumerate all subsets using a bitvector.

In a for loop, go from 0 to 2 to the Nth power minus 1 (or start with 1 if you don't care about the empty set).

On each iteration, determine which bits are set. The Nth bit represents the Nth element of the set. For each set bit, dereference the appropriate element of the set and add to an accumulated value.

ETA: Because the nature of this problem involves exponential complexity, there's a practical limit to size of the set you can enumerate on. If it turns out you don't need all subsets, you can look up "n choose k" for ways of enumerating subsets of k elements.

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Exponential complexity. Not polynomial. –  recursive Dec 31 '08 at 20:09
2^N gets big very fast and will quickly exceed the size of the largest integer that can be represented in one of the standard data types in most programming languages. Thus, for large N, one must use another algorithm to generate all bitvectors. –  Jason Dec 31 '08 at 20:33
Rec: Sorry, yes, corrected. Though it is binomial... Jason: BitVector can be any length, though how you implement any length may depend on your language. The subset algorithm doesn't need to change for larger bitvectors, if the interface to bitvector is abstract enough –  JasonTrue Dec 31 '08 at 20:54
I apologize if I am misreading your post, but you state to use a for loop from 0 to 2^N - 1 to generate the bitvectors. I am saying that for very large, 2^N will exceed the size of the largest integer data type (e.g. Int64 in C#) in most programming languages. –  Jason Dec 31 '08 at 21:43
Yes, but again, a BitVector is not tied to an implementation. The algorithm is the same. You may need to use a LargeNumber class in most (non-lispish) languages. For 2^64, you have too many subsets to practically enumerate anyway. –  JasonTrue Dec 31 '08 at 21:46
show 1 more comment

Here's how a simple recursive solution would look like, in Java:

``````public static void main(String[] args)
{
f(new int[] {1,4,7,13}, 0, 0, "{");
}

static void f(int[] numbers, int index, int sum, String output)
{
if (index == numbers.length)
{
System.out.println(output + " } = " + sum);
return;
}

// include numbers[index]
f(numbers, index + 1, sum + numbers[index], output + " " + numbers[index]);

// exclude numbers[index]
f(numbers, index + 1, sum, output);
}
``````

Output:

``````{ 1 4 7 13 } = 25
{ 1 4 7 } = 12
{ 1 4 13 } = 18
{ 1 4 } = 5
{ 1 7 13 } = 21
{ 1 7 } = 8
{ 1 13 } = 14
{ 1 } = 1
{ 4 7 13 } = 24
{ 4 7 } = 11
{ 4 13 } = 17
{ 4 } = 4
{ 7 13 } = 20
{ 7 } = 7
{ 13 } = 13
{ } = 0
``````
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C#:

I was trying to find something more elegant - but this should do the trick for now...

``````//Set up our array of integers
int[] items = { 1, 3, 5, 7 };

//Figure out how many bitmasks we need...
//4 bits have a maximum value of 15, so we need 15 masks.
//Calculated as:
//    (2 ^ ItemCount) - 1
int len = items.Length;
int calcs = (int)Math.Pow(2, len) - 1;

//Create our array of bitmasks... each item in the array
//represents a unique combination from our items array

//Spit out the corresponding calculation for each bitmask
{
//Get the items from our array that correspond to
//the on bits in our mask
int[] incl = items.Where((c, i) => m[i] == '1').ToArray();

//Write out our mask, calculation and resulting sum
Console.WriteLine(
"[{0}] {1}={2}",
m,
String.Join("+", incl.Select(c => c.ToString()).ToArray()),
incl.Sum()
);
}
``````

Outputs as:

``````[0001] 7=7
[0010] 5=5
[0011] 5+7=12
[0100] 3=3
[0101] 3+7=10
[0110] 3+5=8
[0111] 3+5+7=15
[1000] 1=1
[1001] 1+7=8
[1010] 1+5=6
[1011] 1+5+7=13
[1100] 1+3=4
[1101] 1+3+7=11
[1110] 1+3+5=9
[1111] 1+3+5+7=16
``````
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Mathematica solution:

```{#, Total@#}& /@ Subsets[{1, 4, 7, 13}]  //MatrixForm
```

Output:

``````{}  0
{1} 1
{4} 4
{7} 7
{13}    13
{1,4}   5
{1,7}   8
{1,13}  14
{4,7}   11
{4,13}  17
{7,13}  20
{1,4,7} 12
{1,4,13}    18
{1,7,13}    21
{4,7,13}    24
{1,4,7,13}  25
``````
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PHP: Here's a non-recursive implementation. I'm not saying this is the most efficient way to do it (this is indeed exponential 2^N - see JasonTrue's response and comments), but it works for a small set of elements. I just wanted to write something quick to obtain results. I based the algorithm off Toon's answer.

``````<?php

\$set = array(3, 5, 8, 13, 19);

for(\$i = 0; \$i < pow(2, count(\$set)); \$i++){
\$sum = 0;
for(\$j = count(\$set)-1; \$j >= 0; \$j--) {
if(pow(2, \$j) & \$i) {
\$sum += \$set[\$j];
}
}
}

}
``````

Which will output:

``````0
3   3
5   5
8   8
8   5+3
11  8+3
13  13
13  8+5
16  13+3
16  8+5+3
18  13+5
19  19
21  13+8
21  13+5+3
22  19+3
24  19+5
24  13+8+3
26  13+8+5
27  19+8
27  19+5+3
29  13+8+5+3
30  19+8+3
32  19+13
32  19+8+5
35  19+13+3
35  19+8+5+3
37  19+13+5
40  19+13+8
40  19+13+5+3
43  19+13+8+3
45  19+13+8+5
48  19+13+8+5+3
``````

FYI: My case basically was that I just bought resistance bands for working out. You get 5 bands each having different resistances represented in pounds. The fun thing is: you can combine bands to sum up the total resistance. The bands resistances are 3, 5, 8, 13 and 19 pounds. So you basically get 32 (2^5) combinations (minus the duplicates and zero).

Now it might sound trivial that you could figure it out on the spot, but when you're in the middle of a superset sweating your ass off and you need 29 lbs resistance right now (13+8+5+3), you couldn't care less about doing maths. You just wanna peek at your cheat sheet and get this workout done. Also, some products come with 6 bands (64 combinations) and even 7 bands (128 combinations), so it can get complex. There's even more complexity to this case but I kept it out of the algorithm to keep it simple and to answer the original question. But the algorithm does take care of showing you the most efficient ways for certain resistances first (e.g. for 16: 13+3, 2 bands vs 8+5+3, 3 bands) and orders the bands to use from strongest to lightest in the additions.

I think this case being based on a real life example would make for a great school homework or something.

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This is not the code to generate the sums, but it generates the permutations. In your case:

1; 1,4; 1,7; 4,7; 1,4,7; ...

If I have a moment over the weekend, and if it's interesting, I can modify this to come up with the sums.

It's just a fun chunk of LINQ code from Igor Ostrovsky's blog titled "7 tricks to simplify your programs with LINQ" (http://igoro.com/archive/7-tricks-to-simplify-your-programs-with-linq/).

``````T[] arr = …;
var subsets = from m in Enumerable.Range(0, 1 << arr.Length)
select
from i in Enumerable.Range(0, arr.Length)
where (m & (1 << i)) != 0
select arr[i];
``````
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You might be interested in checking out the GNU Scientific Library if you want to avoid maintenance costs. The actual process of summing longer sequences will become very expensive (more-so than generating a single permutation on a step basis), most architectures have SIMD/vector instructions that can provide rather impressive speed-up (I would provide examples of such implementations but I cannot post URLs yet).

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Thanks Zach,

I am creating a Bank Reconciliation solution. I dropped your code into jsbin.com to do some quick testing and produced this in Javascript:

``````function f(numbers,ids, index,  sum, output, outputid, find )
{
if (index == numbers.length){
var x ="";
if (find == sum) {
y= output + " } = " + sum + "  " + outputid + " }<br/>" ;
}
return;
}
f(numbers,ids, index + 1, sum + numbers[index], output + " " + numbers[index], outputid + " " + ids[index], find);
f(numbers,ids, index + 1, sum, output, outputid,find);
}

var y;

f( [1.2,4,7,13,45,325,23,245,78,432,1,2,6],[1,2,3,4,5,6,7,8,9,10,11,12,13], 0, 0, '{','{', 24.2);
if (document.getElementById('hello')) {
document.getElementById('hello').innerHTML = y;
}
``````

I need it to produce a list of ID's to exclude from the next matching number.

I will post back my final solution using vb.net

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