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The 4-SUM is as follows: Given an array of N distinct integers find 4 integers a,,b,c,d such that a+b+c+d = 0. I could come up with a cubic algorithm using quadratic algorithm for 3-SUM problem. Can we do better than cubic for 4-SUM?

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Yep. O(n^2 log n). Also, here's the question and answer for the general case:… – Carsten Feb 6 '13 at 15:28

3 Answers 3

up vote 11 down vote accepted

Yes you can. Go over all pairs of numbers and store their sum(and also store which numbers give that sum). After that for each sum check if its negation is found among the sums you have. Using a hash you can reach quadratic complexity, using std::map, you will reach O(n^2*log(n)).

EDIT: to make sure no number is used more than once it will better to store indices instead of the actual numbers for each sum. Also as a given sum may be formed by more than one pair, you will have to use a hash multimap. Having in mind the numbers are different for a sum X = a1 + a2 the sum -X may be formed at most once using a1 and once using a2 so for a given sum X you will have to iterate over at most 3 pairs giving -X as sum. This is still constant.

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How do you make sure you don't choose the same element twice? – amit Feb 6 '13 at 15:16
@amit "also store which numbers give that sum". If you found a number chosen twice, just ignore that sum. I imagine there's a simple improvement, but not in the big-O complexity. – Dukeling Feb 6 '13 at 15:17
But this sum might be generated in a different form as well, You should store a list or something per sum, and look for the first element in that list that does not contain one of the two elements. Can you prove it is O(1)? (looking in this list) – amit Feb 6 '13 at 15:19
@amit in fact I was considering using a hash multimap for that very reason. – Ivaylo Strandjev Feb 6 '13 at 15:22
Please extend your answer itself to contain how exactly is it making sure you do not use the same element twice. – amit Feb 6 '13 at 15:23

There is also a O(N^2) algorithm for this problem using O(N^2) extra memory.

1- Generate all the pairwise sums in O(N^2) and store the pair (a_i, a_j) in a hash table and use the absolute value of their sum as the key of the hash table (a_i and a_j are two distinct number of the input array)

2- iterate over the table and find a key which has both negative and positive sum with four distinctive elements and return is as the answer

There is an alternative if you prefer not using hash table. Since your numbers are integers, you can sort the list of all the sum in a linear time of the elements in the sum list using something like a Radix sort (there are O(N^2) elements in the sum list).

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for each index i and j, adding (S[i]+S[j]) in multimap(multimap bcz sum can be duplicate from different integers) and checking whether the multimap contains the sum -(S[i]+S[j]). If it does then add to the resultant set.

void fourSUM(vector<int> array)
unordered_set<vector<int>> result;   // set to avoid duplicate results 
multimap<int,pair<int,int>> twosum_map;

for(unsigned int i=0; i< array.size();i++)
    for(unsigned int j=i+1; j< array.size();j++)
        // insert sum in multimap

        // look for -ve sum in multimap
        int lookfor = -(array[i]+array[j]);
        std::pair <std::multimap<int,pair<int,int>>::iterator, std::multimap<int,pair<int,int>>::iterator> ret;
        ret = twosum_map.equal_range(lookfor);

        for(std::multimap<int,pair<int,int>>::iterator it = ret.first; it != ret.second; it++)
            vector<int> oneresult;
            result.insert(oneresult); // this avoids duplicate results 

// Display Result 
for(set<vector<int>>::iterator it=result.begin();it != result.end();it++)
    for( vector<int>::const_iterator  vit = it->begin(); vit != it->end(); vit++)
        cout << *vit << " ";
    cout << endl;

insertion/find in multimap is log(n). insertion in set is log(n).

complexity O(n^2 * log(n)).

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