1 / 30

Data Structures and Algorithm Analysis Priority Queues (Heaps)

Data Structures and Algorithm Analysis Priority Queues (Heaps). Lecturer: Jing Liu Email: neouma@mail.xidian.edu.cn Homepage: http://see.xidian.edu.cn/faculty/liujing. General Idea.

Download Presentation

Data Structures and Algorithm Analysis Priority Queues (Heaps)

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Data Structures and Algorithm AnalysisPriority Queues (Heaps) Lecturer: Jing Liu Email: neouma@mail.xidian.edu.cn Homepage: http://see.xidian.edu.cn/faculty/liujing

  2. General Idea • Example: Suppose there are a sequence of jobs are sent to a printer. Although jobs sent to a printer are generally placed on a queue, this might not always be the best thing to do. • For instance, if, when the printer becomes available, there are several 1-page jobs and one 100-page job, it might be reasonable to make the long job go last, even if it is not the last job submitted. • This particular application seems to require a special kind of queue, known as a priority queue.

  3. Model • A priority queue is a data structure that allows at least the following two operations: • (1) Insert: is the equivalent of Enqueue • (2) DeleteMin: finds, returns, and removes the minimum element in the priority queue. Insert(H) DeleteMin(H) Priority Queue H

  4. Simple Implementations • There are several obvious ways to implement a priority queue. We could use a simple linked list, performing insertions at the front and traversing the list to delete the minimum. • Alternatively, we could insist that the list be kept always sorted. • Another way of implementing priority queues would be to use a binary search tree. Recall that the only element we ever delete is the minimum. Repeatedly removing a node that is in the left subtree would seem to hurt the balance of the tree by making the right subtree heavy.

  5. Binary Heap • The implementation we will use is known as a binary heap. • Like binary search trees, binary heaps have two properties, namely, a structure property and a heap order property.

  6. Structure Property • Structure property: A heap is a binary tree that is completely filled, with the possible exception of the bottom level, which is filled from left to right. Such a tree is known as a complete binary tree. A B C F D E G H I J

  7. Structure Property • An important observation is that because a complete binary tree is so regular, it can be represented in an array and no pointers are necessary. • For any element in array position i, the left child is in position 2i, the right child is in the cell after that left child (2i+1), and the parent is in position i/2.

  8. Structure Property A B C F D E G H I J I H G E F D J C A B 13 0 2 4 6 1 3 5 7 11 8 10 12 9

  9. Structure Property • Thus, not only are pointers not required, but the operations required to traverse the tree are extremely simple and likely to be very fast on most computers. • The only problem with this implementation is that an estimate of the maximum heap size is required in advance. • A heap data structure will then consist of an array (of whatever type the key is) and an integer representing the maximum and current heap sizes. • Figure 6.4 shows a typical priority queue declaration.

  10. Structure Property Struct HeapStruct { int Capacity; int Size; elementType *Elements; } Initialize(int MaxElements) { Line 3: H=malloc(sizeof(struct HeapStruct)); Line 6: H->Elements= malloc((MaxElements+1)*sizeof(ElementType)); }

  11. Heap Order Property • The property that allows operations to be performed quickly is the heap order property. • Since we want to be able to find the minimum quickly, it makes sense that the smallest element should be at the root. • If we consider that any subtree should also be a heap, then any node should be smaller than all of its descendants.

  12. Heap Order Property • Applying this logic, we arrive at the heap order property: In a heap, for every node X, the key in the parent of X is smaller than (or equal to) the key in X, with the exception of the root (which is has no parent). • Analogously, we can declare a (max) heap, which enables us to efficiently find and remove the maximum element, by changing the heap order property. Thus, a priority queue can be used to find either a minimum or a maximum, but this needs to be decided ahead of time.

  13. Basic Heap Operations • It is easy (both conceptually and practically) to perform the two required operations, namely Insert and DeleteMin. • All the work involves ensuring that the heap order property is maintained.

  14. Basic Heap Operations • Insert: To insert an element X into the heap, we create a hole in the next available location, since otherwise the tree will not be complete. • If X can be placed in the hole without violating heap order, then we do so and are done. • Otherwise we slide the element that is in the hole’s parent node into the hole, thus bubbling the hole up towards the root. • We continue this process until X can be placed in the hole.

  15. Basic Heap Operations 13 Example: 21 16 Insert 14 24 31 19 68 26 65 32 Original Tree

  16. Basic Heap Operations 13 13 21 16 21 16 24 31 19 24 31 19 68 68 26 26 65 65 32 32

  17. Basic Heap Operations 13 13 21 16 21 16 24 19 24 19 31 68 68 26 26 65 65 32 32 31

  18. Basic Heap Operations 13 13 21 16 16 24 19 24 19 21 68 68 26 26 65 65 32 32 31 31

  19. Basic Heap Operations 13 13 16 16 14 24 19 24 19 21 21 68 68 26 26 65 65 32 32 31 31

  20. Basic Heap Operations • DeleteMin: DeleteMins are handled in a similar manner as insertions. Finding the minimum is easy; the hard part is removing it. • When the minimum is removed, a hole is created at the root. Since the heap now becomes one smaller, it follows that the last element X in the heap must move some where in the heap.

  21. Basic Heap Operations • If X can be placed in the hole, then we are done. This is unlikely, so we slide the smaller of the hole’s children into the hole, thus pushing the hole down one level. • We repeat this step until X can be placed in the hole. Thus, our action is to place X in its correct spot along a path from the root containing minimum children.

  22. Basic Heap Operations 13 Example: Delete the minimum key 16 14 19 19 21 68 26 65 32 31 Original Tree

  23. Basic Heap Operations 13 16 14 16 14 19 19 21 19 19 21 68 68 26 26 65 32 31 65 32 31

  24. Basic Heap Operations 14 16 14 16 19 19 21 19 19 21 68 68 26 26 65 32 31 65 32 31

  25. Basic Heap Operations 14 14 16 16 19 19 19 21 19 21 68 68 26 26 65 32 31 65 32 31

  26. Basic Heap Operations 14 14 16 19 16 19 19 21 19 21 68 26 68 26 65 32 31 65 32 31

  27. Basic Heap Operations 14 14 16 19 16 19 19 26 21 19 21 68 26 68 65 32 31 31 65 32

  28. d-Heap • Binary heaps are so simple that they are almost always used when priority queues are needed. • A simple generalization is a d-heap, which is exactly like a binary heap except that all nodes have d children (thus, a binary heap is a 2-heap).

  29. d-Heap 1 5 3 2 10 7 6 9 15 17 4 13 8 11 9 An example of 3-heap

  30. Homework • 6.2a • 6.3 • 6.13

More Related