merge sort space

In a top-down merge sort the recursive functions are called in this fashion:

``````void mergesort(Item a[], int l, int r) {
if (r <= l) return;
int m = (r+l)/2;
mergesort(a, l, m);
mergesort(a, m+1, r);
merge(a, l, m, r);
}
``````

It is given in text book that space complexity of this strategy is O(n). whereas if we look at the recursion closely : we are passing pointer to array in recursive calls. Second the recursion is resolved in preorder order of traversal by merging bottom nodes to parent nodes. so at each time there are O(logn) variables on stack (or O(log n) frames on stack). So how is it that space complexity is O(n) inspite of having in-place merging techniques?

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accept a few answers! –  Foo Bah Aug 10 '11 at 20:18
This is not in place merging. –  Frank Q. Apr 19 '12 at 0:45

You are right that the space taken up by the recursive calls is O(log n).

But the space taken by the the array itself is O(n).

The total space complexity is O(n) + O(log n).

This is O(n), because it is bounded above by (n)=>2(n).

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Space taken for what array ? I dont see any array created in that function. The one that is passed to mergesort is passed by reference. –  Frank Q. Apr 19 '12 at 0:35
Just because the function doesn't create an array doesn't mean the array is not there. The array already exists and it takes up O(n) space. We normally talk of the time and space complexity of the whole process, but yeah, if you want to be super-picky, then the function doesn't add O(n) space to the existing array, it only adds O(log n) for stack frame data. –  Ray Toal Apr 19 '12 at 4:27
I agree with @FrankQ. The input is not normally considered part of the space complexity. Which is why bubble sort, for example, is considered to be O(1) and not O(n) space. –  Karan Sep 26 '12 at 19:50

So how is it that space complexity is O(n) inspite of having in-place merging techniques?

Because the implementation given in your book probably doesn't use an in-place merging technique. If an O(1) space and O(n log n) time sort is required, heapsort is usually preferred to merge sort since it is much easier. Only when you're talking about sorting lists does doing an O(1) merge sort make sense... and then, it is easy to do. Merge sort specified for e.g. a linked list would be O(1) space and O(n log n) time.

The fundamental misunderstanding here seems to be this: time complexities apply to algorithms, not the problems they solve. I can write an O(n^3) merge sort if I want... doesn't mean my algorithm isn't O(n^3), and it doesn't say anything about your O(n log n) merge sort. This is a little different from computational complexity, where we talk about e.g. problems being in P... a problem is in P if there's a polynomial time algorithm for it. However, problems in P can also be solved by non-polynomial time algorithms, and if you think about it, it's trivial to construct such an algorithm. Same goes for space complexities.

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How are you going to even store `n` items in `log n` space? That doesn't make sense. If you're sorting `n` items, `O(n)` space is the best you're going to get.