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This is an interview question. There are two arrays A1 and A2. Find out the pairs of numbers in A2 which were in reverse order in A1. For example, A1 = [2 6 5 8 1 3], A2 = [1 2 3 4 5 6]. Answer: (1, 2), (1, 5), (1, 6), (5, 6), (3, 5), (3, 6).

O(N^2) algorithm is trivial. Is there any better algorithm ? What do you think ?

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Why (1,3) ? doesn't look like it – abyx Jan 7 '11 at 9:16
@abyx, sorry. I will fix it. – Michael Jan 7 '11 at 9:18
O(N^2) is excellent if you have it. – Saeed Amiri Jan 7 '11 at 9:27
@Saeed O(N^2) is brute force. – marcog Jan 7 '11 at 9:29
What about (1,5) and (3,5)? Are you really finding inversions, inverted according to an incomplete order defined by the array A2? – Steve Jessop Jan 7 '11 at 9:30

If you have a pattern like A1 = 1111122222 and A2 = 2222211111, then you'll output (N/2)4 pairs. Therefore you can't do any better than O(N4) in the worst case.

Below is an O(N4) solution that handles duplicates and some numbers occurring in only one of the two lists. Note that while it is O(N4) in the worst-case, it's average case of O(N2) is far more likely, similar to the complexity of quick-sort.

index = {} # dictionary of lists defaulting to []
for i in 0..len(A2):
for i1 in 0..len(A1):
  for j1 in i+1..len(A1):
    for i2 in index[A1[i1]]:
      for j2 in index[A1[j1]]:
        if i2 != j2 and i1 < j1 != i2 < j2:
          print A1[i1], A1[j1]

If we relax the output format slightly to allow outputting of (1, 2) * 7 to indicate 7 reversals, then we can do better. First zip the lists, giving [(2, 1), (6, 2), (5, 3), (8, 4), (1, 5), (3, 6)] for the example. Sort the arrays using a stable sort: first using the first item in each tuple, then sort another copy of the list using the second item in the tuple. Then use an adapted merge sort like the one mentioned here, but instead of counting we produce we output the inversions. This is an O(NlogN) solution.

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Could you have an output-sensitive algorithm that takes o(N^2) (little-O here) time, plus time linear in the number of pairs produced? I can't think of one, but I can't rule one out either. – templatetypedef Jan 7 '11 at 9:25
@template I can't think of one either, but if I do I'll post it. – marcog Jan 7 '11 at 9:29
I think in your second level nested loops you saying index[A2[i1]] not index[A1[i1]]? and your second nested loops takes O(n^2) in worst case, and your algorithm will be O(n^4) in worst case. – Saeed Amiri Jan 7 '11 at 21:34
@Saeed It's finding the indexes of A1[i1] in A2. index[A2[i1]] would always return a list including i1 in it. You're right about it being O(N^) in the worst case. I missed the case where A1 = A2 = 11111, which while rare will cause O(N^4) performance. The thing though, is that this also made me realise the output size could also be O(N^4), e.g. for A1 = 1111122222, A2 = 2222211111. I'll edit this in. Thanks for making me re-think this! – marcog Jan 7 '11 at 22:10
Yes in fact it's C(2,n) * C(2,n) which is O(n^4), any solution is Omega(n^4) at least and because of this I wondered when the OP said O(N^2) is trivial (and because I knew you will edit your answer I didn't downvoted you :). – Saeed Amiri Jan 7 '11 at 23:09

If both arrays have same elements and A1 is a rearrange of A2(which is sorted) then we can modify Merge Sort to count number of inversions present in A1.

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Counting will be more efficient. Notice in that link where it says "suppose ai > bj: then all these are bigger than bj". When counting only, you can add the work out the number out of order in such a case in constant time. When finding the pairs themselves, it'll take O(number of pairs). – marcog Jan 7 '11 at 9:25
sorry my bad.. i have modified my answer for a special case – Rozuur Jan 7 '11 at 9:31

I think this algorithm is quite close to the best one. If we discard the computational cost of building the trie ( n^2 assignement), we are left with a cost of n(n-1)/2 operations. It somehow uses a trie to make the pair checking cost constant. If needed, you can, at the cost of len(a)+len(b), scan the two arrays and infer what is MAX :

#include "stdio.h"
#include "stdlib.h"

#define MAX 9
#define AEL 6
#define BEL 6

int main(){
    int b[BEL] = {2,6,5,8,1,3};
    int a[AEL] = {1,2,3,4,5,6};
    int **trie = calloc(MAX,sizeof(int*));
    int i,j;

    for(i = 0; i < MAX; i++){
        trie[i] = calloc(MAX,sizeof(int));

    for(i = 0; i < AEL; i++){
        for(j = i+1; j < AEL; j++){
            trie[a[i]][a[j]] = 1;

    for(i = 0; i < BEL; i++ ){
        for(j = i+1; j < BEL ; j++){
                printf("(%d %d) ",b[j],b[i]);

    return 0;
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