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Given the following code:

for (int i = 0; i < n-1; ++i)
    for (int j = i+1; j < n; ++j)
        // Do work.

What is the Big-Oh value for it (over n)? I'm thinking it's O(N^2) but I'm not sure.

I did find a similar question here: complexity for nested loops

but it's not quite the same I think.

share|improve this question
Well, can you derive an expression for how many times "do work" is executed? – Oliver Charlesworth May 27 '13 at 9:55
@OliCharlesworth If I could, I wouldn't be asking! :) – Matthew Watson May 27 '13 at 9:58
You should try a few different values of n by hand, and see what the pattern is... – Oliver Charlesworth May 27 '13 at 9:59
Is this really off-topic for SO? Why do we have a big-o tag then? – Matthew Watson May 27 '13 at 9:59
up vote 3 down vote accepted

Yes, that's O(N^2). Pair up the iterations of the inner loop in the beginning and at the end of the outer loop, like this:

The inner loop will execute...

  • N-1 times on the first iteration of the outer loop, and 1 time on the last iteration
  • N-2 times on the second iteration of the outer loop, and 2 times on the second to last iteration
  • N-3 times on the third iteration of the outer loop, and 3 times on the third to last iteration
  • ... and so on; you will have N/2 pairs like that; when N is odd, the last pair is incomplete.

You can see that each of the pairs executes a total of N times, and you have N/2 such pairs, for a total of N*(N-1)/2 times.

The way the formula is derived comes from the derivation of the formula for the sum of arithmetic progression with the common difference of 1.

share|improve this answer
Thanks; I suspected as much, but when asking my colleagues they weren't sure. – Matthew Watson May 27 '13 at 10:03
I'm selecting this as the answer because I prefer the mathematical solution over an empirical one. – Matthew Watson May 27 '13 at 10:08

It should be possible to check it this way.

int z = 0, n = 10; // try 20 etc
for (int i = 0; i < n-1; ++i)
    for (int j = i+1; j < n; ++j)

Now, check the value of z.

With n = 10; z becomes 45
With n = 20; z becomes 190
With n = 40; z becomes 780

A doubling in n caused z to become ~4 times its value. Hence, it is approximately O(n^2).

share|improve this answer
Aye, I guess I can do it empirically. I wonder if there's a proper mathematical proof though. – Matthew Watson May 27 '13 at 10:02

Methodically, using Sigma notation (empirically verified), you can obtain the exact number of iterations plus the order of growth complexity:

enter image description here

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