the binary heap
DESCRIPTION
the binary heapTRANSCRIPT
The Binary Heap
Binary Heap• Looks similar to a binary search tree
• BUT all the values stored in the subtree rooted at a node are greater than or equal to the value stored at the node.– In a min heap that is.– We will mainly talk about min heaps, but it’s the same concept.
Binary Heap
• What are they used for?– Priority Queue– Performing Heapsort
Binary Heap
• Priority Queue– A queue where you always extract the item with
the highest priority next.– What operations do we need?• An efficient deleteMin() and Insert()• For our implementation we will achieve O(log n) time
for the deleteMin() and Insert() operations.
Binary Heap• Balanced binary tree– Can even store a binary heap in an array instead of
an actual binary tree.– The children of node i are nodes 2i and 2i+1.
• Consider:
• Draw the tree• What node is the parent of node i?– Floor(i/2)
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Binary Tree
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Heap Operation : Insert
• Insert into the next open spot in the heap, or the next array location.– This will keep the heap balanced.
• However, in all likelihood this is not where the element belongs– Thus we have to do the Percolate Up procedure– For example, if you inserted 25 into the next open
spot, it would be out of order.
Percolate Up
• If the parent of the new node is greater than the inserted value, swap them.– This is a single percolate up step.
• Continue this process until the inserted node’s parent stores a number lower than it.
• Since the height of the tree is O(lg n), this is an O(lg n) operation.
• What does this remind you of?
Insert
• Consider the tree we had before– Insert 65
• Where do you insert it?10
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70
Now what?
Insert
• Consider the tree we had before– Insert 65
• Where do you insert it?10
20
40
80 90 100 110
50
30
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120 130 25
70
Insert
• Consider the tree we had before– Insert 65
• Where do you insert it?10
20
40
80 90 100 110
50
30
60
120 130
25
70
Insert
• Consider the tree we had before– Insert 65
• Where do you insert it?10
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50 60
120 130 70
25
30
Heap Operation: deleteMin
• First part is easy– Just return the value stored in the root.
• Then what do we replace it with?– Place the “last” node in the vacated root.– Probably not the correct location.– Percolate Down
Percolate Down
• Compare the element to its children.– If one of the children is less than the node, swap
the lowest.• This is a single percolate down step.– CONTINUE until this “last” node has children with
larger values than it.
• Real life example
Heap Operation: Heapify
• Heapify or Bottom-Up Heap Construction• How to construct a heap out of unsorted
elements.1) Place all the unsorted elements in a complete binary
tree.2) Going through the nodes in backwards order, and
skipping the leaf nodes, run Percolate Down on each of these nodes.• Notice that each subtree below any node that has already
run Percolate Down is already a heap.• So after we run Percolate Down on the root, the whole
tree is a heap.
Heapify• Let’s run Heapify on the following elements:
80 110 90 30 60 120 40 10 50 100 70 20 130
0 1 2 3 4 5 6 7 8 9 10 11 12 13
80
110
30
10 50 100 70
60
90
120
20 130
40
Where do we start?
120
Heapify• Let’s run Heapify on the following elements:
80 110 90 30 60 20 40 10 50 100 70 120 130
0 1 2 3 4 5 6 7 8 9 10 11 12 13
80
110
30
10 50 100 70
60
90
130
40
120
20
Where do we look next?
60
Heapify• Let’s run Heapify on the following elements:
80 110 90 30 60 20 40 10 50 100 70 120 130
0 1 2 3 4 5 6 7 8 9 10 11 12 13
80
110
30
10 50 100 70
60
90
130
4020
Where do we look next?
120
30
Heapify• Let’s run Heapify on the following elements:
80 110 90 30 60 20 40 10 50 100 70 120 130
0 1 2 3 4 5 6 7 8 9 10 11 12 13
80
110
50 100 70
60
90
130
4020
Where do we look next?
12030
10
90
Heapify• Let’s run Heapify on the following elements:
80 110 90 30 60 20 40 10 50 100 70 120 130
0 1 2 3 4 5 6 7 8 9 10 11 12 13
80
110
50 100 70
60
20
130
40
12030
10 90
Heapify• Let’s run Heapify on the following elements:
80 110 90 30 60 20 40 10 50 100 70 120 130
0 1 2 3 4 5 6 7 8 9 10 11 12 13
80
110
50 100 70
60
20
130
40
12030
10 90
Where do we look next?110
Heapify• Let’s run Heapify on the following elements:
80 110 90 30 60 20 40 10 50 100 70 120 130
0 1 2 3 4 5 6 7 8 9 10 11 12 13
80
10
50 100 70
60
20
130
40
12030
10 90110
Heapify• Let’s run Heapify on the following elements:
80 110 90 30 60 20 40 10 50 100 70 120 130
0 1 2 3 4 5 6 7 8 9 10 11 12 13
80
10
50 100 70
60
20
130
40
120
90
110
30
Heapify• Let’s run Heapify on the following elements:
80 110 90 30 60 20 40 10 50 100 70 120 130
0 1 2 3 4 5 6 7 8 9 10 11 12 13
80
10
50 100 70
60
20
130
40
120
90
110
30
Where do we look next?
80
Heapify• Let’s run Heapify on the following elements:
80 110 90 30 60 20 40 10 50 100 70 120 130
0 1 2 3 4 5 6 7 8 9 10 11 12 13
10
80
50 100 70
60
20
130
40
120
90
110
30
Heapify• Let’s run Heapify on the following elements:
80 110 90 30 60 20 40 10 50 100 70 120 130
0 1 2 3 4 5 6 7 8 9 10 11 12 13
10
50 100 70
60
20
130
40
120
90
110
80
30
Heapify• Let’s run Heapify on the following elements:
80 110 90 30 60 20 40 10 50 100 70 120 130
0 1 2 3 4 5 6 7 8 9 10 11 12 13
10
100 70
60
20
130
40
120
90
110
30
80
50
Heapify• Why can we NOT go through the nodes in forward order?
• What’s the running time of the algorithm to create a heap?– In a heap with n nodes, we run Percolate Down on n/2 of
those nodes.– The max number of steps of any Percolate Down is?
O(log n)– Thus an upper bound for Make-Heap is
O(n log n)• We can do a more careful analysis for a tighter bound for
the running time.
Make-Heap Analysis
• On the board.
Heap Sort
• Now that we know the basic operations to perform on a heap, we can use these to sort values using a heap.
• Basic Idea:1) Insert all items into a heap2) Extract the minimum items n times in a row storing the values
sequentially in an array.• What is the run time of Heap Sort?– Since each insert and extraction takes O(lg n) time.– This sort works in O(n lg n) time.
• Let’s do an example.