# How to delete in a heap data structure

I understand how to delete the root node from a max heap but is the procedure for deleting a node from the middle to remove and replace the root repeatedly until the desired node is deleted?

2) Is O(log n) the correct complexity for this procedure 3) Does this affect the big O complexity since other nodes must be deleted in order to delete a specific node?

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why would you want to delete a node in the middle in a max heap? – BrokenGlass Jan 2 '12 at 20:45
@BrokenGlass: One very real use of such a thing is a heap representation of a priority queue of scheduled jobs, and somebody cancels one of the jobs. – Jim Mischel Jan 4 '12 at 4:02
@Jim Mischel: that's a good example - thanks – BrokenGlass Jan 4 '12 at 13:55
@BrokenGlass: I recently implemented the LPA* pathfinding algorithm, a replanning algorithm based on A*. It required the ability to remove from the middle of the priority-queue. – BlueRaja - Danny Pflughoeft Jul 26 '12 at 21:32

Actually, you can remove an item from the middle of a heap without trouble. The idea is to take the last item in the heap and, starting from the current position (i.e. the position that held the item you deleted), sift it up if the new item is greater than the parent of the old item. If it's not greater than the parent, then sift it down.

That's the procedure for a max heap. For a min heap, of course, you'd reverse the greater and less cases.

Finding an item in a heap is an O(n) operation, but if you already know where it is in the heap, removing it is O(log n).

I published a heap-based priority queue for DevSource a few years back. See A Priority Queue Implementation in C#. It has a `RemoveAt` method that does exactly what I described.

Full source is at http://www.mischel.com/pubs/priqueue.zip

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I'm not quite sure I understand you. Are you saying that we remove the arbitrary element and replace its position with the last element of the heap tree, and either sift up or down? I doubt that this what you're saying because 1) It cannot sift up ever 2) The tree might not be complete any more... Can you elaborate? Thank you. – Roronoa Zoro Oct 23 '12 at 6:37
@RoronoaZoro: That's exactly what I'm saying. And it does indeed work. Take a look at my sample code, or look at any heap implementation that allows removal. – Jim Mischel Oct 23 '12 at 14:20
@RoronoaZoro: It can actually sift up because it might not be part of the same tree. Picture the root -- at the very beginning the tree is split into two independent parts. You might be deleting a node from the left subtree, but if you take the last item from the last level of the heap that might be an item from the right subtree. There isn't ordering between the subtrees, only relative to their parent. – Joseph Garvin Feb 15 '13 at 16:53

The problem with removing an arbitrary element from a heap is that you cannot find it.

In a heap, looking for an arbitrary element is `O(n)`, thus removing an element [if given by value] is `O(n)` as well.

If it is important for you to remove arbitrary elements form the data structure, a heap is probably not the best choice, you should consider full sorted data structurs instead such as balanced BST or a skip list.

If your element is given by reference, it is however possible to remove it in `O(logn)` by simply 'replacing' it with the last leaf [remember a heap is implemented as a complete binary tree, so there is a last leaf, and you know exactly where it is], remove these element, and re-heapify the relevant sub heap.

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Note that you can find it if you're willing to roll your own heap implementation. You just need it to save a mapping from object to index, or to intrusively store the index on the object, and update it every time it swaps elements. Updating isn't expensive since it's only ever on a swap, where you just swap the indexes; you don't have to do any scanning. – Joseph Garvin Feb 15 '13 at 16:55

If you have a max heap, you could implement this by assigning a value larger than any other (eg something like `int.MaxValue` or `inf` in whichever language you are using) possible to the item to be deleted, then re-heapify and it will be the new root. Then perform a regular removal of the root node.

This will cause another re-heapify, but I can't see an obvious way to avoid doing it twice. This suggests that perhaps a heap isn't appropriate for your use-case, if you need to pull nodes from the middle of it often.

(for a min heap, you can obviously use `int.MinValue` or `-inf` or whatever)

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What you want to achieve is not a typical heap operation and it seems to me that once you introduce "delete middle element" as a method some other binary tree(for instance red-black or AVL tree) is a better choice. You have a red-black tree implemented in some languages(for instance map and set in c++).

Otherwise the way to do middle element deletion is as proposed in rejj's answer: assign a big value(for max heap) or small value(for min heap) to the element, sift it up until it is root and then delete it.

This approach still keeps the O(log(n)) complexity for middle element deletion, but the one you propose does. It will have comlexity O(n*log(n)) and therefor is not very good. Hope that helps.

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