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int currentMinIndex = 0;

for (int front = 0; front < intArray.length; front++)
{
    currentMinIndex = front;

    for (int i = front; i < intArray.length; i++)
    {
        if (intArray[i] < intArray[currentMinIndex])
        {
            currentMinIndex = i;
        }
    }

    int tmp = intArray[front];
    intArray[front] = intArray[currentMinIndex];
    intArray[currentMinIndex] = tmp;
}

The inner loop is iterating: n + (n-1) + (n-2) + (n-3) + ... + 1 times.

The outer loop is iterating: n times.

So you get n * (the sum of the numbers 1 to n)

Isn't that n * ( n*(n+1)/2 ) = n * ( (n^2) + n/2 )

Which would be (n^3) + (n^2)/2 = O(n^3) ?

I am positive I am doing this wrong. Why isn't O(n^3)?

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1  
Why the downvote? –  ordinary Jul 13 '12 at 20:18
1  
is this homework? –  DarthVader Jul 13 '12 at 20:19
    
to be able understand this, you need to understand Big Oh notation. try that then think again. –  DarthVader Jul 13 '12 at 20:19
6  
Not to nitpick but the algorithm you show is a Selection sort not a Bubble sort –  Frank Boyne Jul 13 '12 at 20:33
1  
Last week, I have written article about asymptotic complexity and by coincidence, I use bubble sort as an example. Give it a shot :-) (en.algoritmy.net/article/44682/Asymptotic-complexity). Your mistake is, as it was correctly said by Henk, that the inner loop is O(n). O(n^2) - the sum of arithmetic order is complexity of both loops together. –  malejpavouk Jul 13 '12 at 20:39
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5 Answers 5

up vote 16 down vote accepted

You are correct that the outer loop iterates n times and the inner loop iterates n times as well, but you are double-counting the work. If you count up the total work done by summing the work done across each iteration of the top-level loop you get that the first iteration does n work, the second n - 1, the third n - 2, etc., since the ith iteration of the top-level loop has the inner loop doing n - i work.

Alternatively, you could count up the work done by multiplying the amount of work done by the inner loop times the total number of times that loop runs. The inner loop does O(n) work on each iteration, and the outer loop runs for O(n) iterations, so the total work is O(n2).

You're making an error by trying to combine these two strategies. It's true that the outer loop does n work the first time, then n - 1, then n - 2, etc. However, you don't multiply this work by n to to get the total. That would count each iteration n times. Instead, you can just sum them together.

Hope this helps!

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1  
Thanks very much. I see what I was doing wrong now –  ordinary Jul 13 '12 at 20:27
1  
Might be worth adding that Big O describes the growth rate of an algorithm proportional to the size of the inputs which is not necessarily the same thing as the exact amount of iterations taken for the algorithm to run. –  Mike Jul 13 '12 at 20:29
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Your inner loop is iterating, IN TOTAL, as you said n + (n-1) + (n-2) + (n-3) + ... + 1 times. So it is O(n + (n-1) + (n-2) + (n-3) + ... + 1) = O(n(n+1)/2) = O(n^2)

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Ah just had the Aha moment. ty. –  ordinary Jul 13 '12 at 20:25
    
Solve (n*(n+1))/2 for n=5 and you get 15, not 5^2=25. Not the same. –  ruralcoder Jan 25 '13 at 6:35
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The inner loop iterates n times(in worst case):

for(int i = front; i < intArray.length; i++)

The outer loop iterates n times:

for(int front = 0; front < intArray.length; front++)

Therefore O(n^2)

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How you basically calculate N...

  • Each line: +1
  • Each Loop *N

    So you start adding numbers get to your first loop now you have N+1, you keep going and you eventually get N*N or N^2 for the time plus some number. Pulling off the number as it is generally insignificant compared to N.

Pretty much N is a representation of all the items in the loop kind of like 1,2,3...N. So it is simply representing a number not how many times a loop, loops.

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Just for the sake of having some Python version of bubble sort...

def bubble_sort(input):
    n = len(input)
    iterations = 0
    for i in xrange(n, 1, -1):
        for j in range(0, i - 1):
            iterations += 1
            if input[j] > input[j+1]:
                input[j],input[j+1] = input[j+1],input[j]

    print iterations
    return input

Iterations was added to the inner loop to count the total iterations. Nothing to do with bubble sort.

Passing an array of 5 elements, results in 15 iterations not 25. Also when pre-sorted it also results in 15 iterations. But the complexity must also take into account the comparison and the swapping.

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