# Finding Nth item of unsorted list without sorting the list

Hey. I have a very large array and I want to find the Nth largest value. Trivially I can sort the array and then take the Nth element but I'm only interested in one element so there's probably a better way than sorting the entire array...

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Sorting would require O(nlogn) runtime at minimum - There are very efficient selection algorithms which can solve your problem in linear time.

`Partition-based selection` (sometimes `Quick select`), which is based on the idea of quicksort (recursive partitioning), is a good solution (see link for pseudocode + Another example).

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Nice link. I believe this is the best. –  Jeff Meatball Yang Jun 23 '09 at 20:26
Unfortunately, the link "Another example" now leads to a protected web page at MIT, that you must have permission to access. –  Beel Feb 10 '13 at 5:48

A heap is the best data structure for this operation and Python has an excellent built-in library to do just this, called heapq.

``````import heapq

def nth_largest(n, iter):
return heapq.nlargest(n, iter)[-1]
``````

Example Usage:

``````>>> import random
>>> iter = [random.randint(0,1000) for i in range(100)]
>>> n = 10
>>> nth_largest(n, iter)
920
``````

Confirm result by sorting:

``````>>> list(sorted(iter))[-10]
920
``````
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This works well (linear time) if you want the nth largest or smallest item(s), where n is a constant. If n is half the length of the list (i.e. you want the median), this is still O(nlogn) time. –  mgold Oct 11 '12 at 17:34

You can iterate the entire sequence maintaining a list of the 5 largest values you find (this will be O(n)). That being said I think it would just be simpler to sort the list.

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But when it isn't the fifth but the nth element, you'll have O(n²) which is even worse than sorting. –  Dario Jun 23 '09 at 20:10
I suppose you mean to maintain a list of the N largest values. But N cannot be too large in that case. –  Bruno Ranschaert Jun 23 '09 at 20:11

A simple modified quicksort works very well in practice. It has average running time proportional to N (though worst case bad luck running time is O(N^2)).

Proceed like a quicksort. Pick a pivot value randomly, then stream through your values and see if they are above or below that pivot value and put them into two bins based on that comparison. In quicksort you'd then recursively sort each of those two bins. But for the N-th highest value computation, you only need to sort ONE of the bins.. the population of each bin tells you which bin holds your n-th highest value. So for example if you want the 125th highest value, and you sort into two bins which have 75 in the "high" bin and 150 in the "low" bin, you can ignore the high bin and just proceed to finding the 125-75=50th highest value in the low bin alone.

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Use heapsort. It only partially orders the list until you draw the elements out.

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Try to find the n/2-th element - Requires O(nlogn)! –  Dario Jun 23 '09 at 20:13

You essentially want to produce a "top-N" list and select the one at the end of that list.

So you can scan the array once and insert into an empty list when the largeArray item is greater than the last item of your top-N list, then drop the last item.

After you finish scanning, pick the last item in your top-N list.

An example for ints and N = 5:

``````int[] top5 = new int[5]();
top5[0] = top5[1] = top5[2] = top5[3] = top5[4] = 0x80000000; // or your min value

for(int i = 0; i < largeArray.length; i++) {
if(largeArray[i] > top5[4]) {
// insert into top5:
top5[4] = largeArray[i];

// resort:
quickSort(top5);
}
}
``````
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As people have said, you can walk the list once keeping track of K largest values. If K is large this algorithm will be close to O(n2).

However, you can store your Kth largest values as a binary tree and the operation becomes O(n log k).

According to Wikipedia, this is the best selection algorithm:

`````` function findFirstK(list, left, right, k)
if right > left
select pivotIndex between left and right
pivotNewIndex := partition(list, left, right, pivotIndex)
if pivotNewIndex > k  // new condition
findFirstK(list, left, pivotNewIndex-1, k)
if pivotNewIndex < k
findFirstK(list, pivotNewIndex+1, right, k)
``````

Its complexity is O(n)

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I believe the Tournament Algorithm, see Dario's links, is what you are shooting for. It has an operation of O(n + k*log(n)). –  tgray Jun 23 '09 at 20:43
My mistake, though I would be interested to see a full implementation of this in Python. –  tgray Jun 24 '09 at 11:44

You could try the Median of Medians method - it's speed is O(N).

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