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Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Heap Data Structure
Zahoor Jan
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Heaps
A (binary) heap data structure is an array object that can be
viewed as a complete binary tree
Each node of the tree corresponds to an element of the array that
stores the value in the node
A complete binary tree is one where all the internal nodes have
exactly 2 children, and all the leaves are on the same level.
The tree is completely filled on all levels except possibly the
lowest, which is filled from left to right up to a point
Leaf nodes are nodes without children.
 Leaf node
 Interior node
Edge

Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Heaps
Height of a node: The number of edges starting at that node, and going
down to the furthest leaf.
Height of the heap: The maximum number of edges from the root to a leaf.
 Root
Height of blue
node = 1
Height of root = 3
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Heaps
Complete binary tree– if not full, then the only
unfilled level is filled in from left to right.
2 3
4 5 6 7
8 9 10 11 12 13
1
2 3
4 5 6
127 8 9 10 11
1
Parent(i)
return i/2
Left(i)
return 2i
Right(i)
return 2i + 1
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Heaps
The heap property of a tree is a condition that must be true for
the tree to be considered a heap.
Min-heap property: for min-heaps, requires
A[parent(i)] ≤ A[i]
So, the root of any sub-tree holds the least value in that sub-tree.
Max-heap property: for max-heaps, requires
A[parent(i)] ≥ A[i]
The root of any sub-tree holds the greatest value in the sub-tree.
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Heaps
Looks like a max heap, but max-heap property is violated at
indices 11 and 12. Why?
because those nodes’ parents have smaller values than their
children.
2
8
3
8
4
8
5
7
6
8
7
1
8
6
9
7
10
5
11
8
12
9
1
9
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Heaps
Assume we are given a tree represented by a linear array A, and
such that i ≤ length[A], and the trees rooted at Left(i) and
Right(i) are heaps. Then, to create a heap rooted at A[i], use
procedure Max-Heapify(A,i):
Max-Heapify(A,i)
1. l  Left(i)
2. r  Right(i)
3. if l ≤ heap-size[A] and A[l] > A[i]
4. then largest  l
5. else largest  i
6. if r ≤ heap-size[A] and A[r] > A[largest]
7. then largest  r
8. if largest ≠ i
9. then swap( A[i], A[largest])
Max-Heapify(A, largest)
20
9
19 18
6 7
17 16 17 16 1
10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Heaps
If either child of A[i] is greater than A[i], the greatest child
is exchanged with A[i]. So, A[i] moves down in the heap.
The move of A[i] may have caused a violation of the max-
heap property at it’s new location.
So, we must recursively call Max-Heapify(A,i) at the
location i where the node “lands”.
The above is the top-down approach of Max-Heapify(A,i)
20
9
19 18
6 7
17 16 17 16 1
10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Max-Heapify(A,1)
20 9
19 18 6 7
17 16 17 16 1
10
10 9
19 18 6 7
17 16 17 16 1
20
10 9
19 18 6 7
17 16 17 16 1
20
19 9
10 18 6 7
17 16 17 16 1
20
19 9
10 18 6 7
17 16 17 16 1
20
19 9
17 18 6 7
10 16 17 16 1
20
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Run Time of Max-Heapify()
Run time of Max-Heapify().
How many nodes, in terms of n, is in the sub-tree with the most nodes?
2 n / 3
So, worst case would follow a path that included the most nodes
T(n) = T(2n/3) + Θ(1)
Why Θ(1)? Note that all the work in lines 1-7 is simple assignments or
comparisons, so they are constant time, or Θ(1).
2
1
2 3
4 5 6 7
8 9 10 11
1
2 3
4 5
1
2(2) / 3 = 2
1 ≤ 2 2(5) / 3 = 3
3 ≤ 3 2(11) / 3 = 8
7 ≤ 8
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Heaps
So, what must we do to build a heap?
We call Max-Heapify(A,i) for every i starting at last node
and going to the root.
Why Bottom-up?
Because Max-Heapify() moves the larger node upward
into the root. If we start at the top and go to larger
node indices, the highest a node can move is to the root
of that sub-tree. But what if there is a violation between
the sub-tree’s root and its parent?
So, we must start from the bottom and go towards the
root to fix the problems caused by moving larger nodes
into the root of sub-trees.
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Heaps
Bad-Build-Max-Heap(A)
1. heap-size[A]  length[A]
2. for i  length[A] downto 1
3. do Max-Heapify(A,i)
Can this implementation be improved?
Sure can!
2
3
4 5
6 7
8 9 10 11
1
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Heaps
Without going through a formal proof, notice that there is no
need to call Max-Heapify() on leaf nodes. At most, the
internal node with the largest index is at most equal to
length[A]/2.
Since this may be odd, should we use the floor or the ceiling?
In the case below, it is clear that we really need the floor
of length[A]/2 which is 5, and not the ceiling, which is 6.
Build-Max-Heap(A)
1. heap-size[A]  length[A]
2. for i  length[A]/2 downto 1
3. do Max-Heapify(A,i)
2 3
4 5 6 7
8 9 10 11
1
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: building a heap (1)
4 1 3 2 16 9 10 14 8 7
1 2 3 4 5 6 7 8 9 10
4
1
2 16
7814
3
9 10
1
2 3
4 5 6 7
8 9 10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: building a heap (2)
4
1
2 16
7814
3
9 10
1
2 3
4 5 6 7
8 9 10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: building a heap (4)
4
1
14 16
782
3
9 10
1
2 3
4 5 6 7
8 9 10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: building a heap (5)
4
1
14 16
782
10
9 3
1
2 3
4 5 6 7
8 9 10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: building a heap (6)
4
16
14 7
182
10
9 3
1
2 3
4 5 6 7
8 9 10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: building a heap (7)
16
14
8 7
142
10
9 3
1
2 3
4 5 6 7
8 9 10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Priority Queues
A priority queue is a data structure for maintaining a set S of elements, each with
an associated value called a key.
We will only consider a max-priority queue.
If we give the key a meaning, such as priority, so that elements with the highest
priority have the highest value of key, then we can use the heap structure to
extract the element with the highest priority.
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Priority Queues
Max priority queue supports the following operations:
Max-Heap-Insert(A,key): insert key into heap, maintaining heap property
Heap-Maximum(A): returns the heap element with the largest key
Heap-Extract-Max(A): returns and removes the heap element with the largest key,
and maintains the heap property
Heap-Increase-Key(A,i,key): used (at least) by
Max-Heap-Insert() to set A[i]  A[key], and then maintaining the heap property.
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Priority Queues
Heap-Maximum(A)
1. return A[1]
Heap-Extract-Max(A)
1. if heap-size[A] < 1
2. then error “heap underflow”
3. max  A[1]
4. A[1]  A[heap-size[A] ]
5. heap-size[A]  heap-size[A] - 1
6. Max-Heapify(A,1)
7. return max
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Priority Queues
Heap-Increase-Key(A,i,key)
1. if key < A[i]
2. then error “new key is smaller than current key”
3. A[i]  key
4. while i > 1 and A[Parent(i)] < A[i]
5. do exchange A[i]  A[Parent(i)]
6. i  Parent(i)
Max-Heap-Insert(A,key)
1. heap-size[A]  heap-size[A]+1
2. A[heap-size[A]]  – ∞
3. Heap-Increase-Key(A, heap-size[A], key)
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: increase key (1)
16
14
8 7
142
10
9 3
1
2 3
4 5 6 7
8 9 10
increase 4 to 15
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: increase key (2)
16
14
8 7
1152
10
9 3
1
2 3
4 5 6 7
8 9 10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: increase key (3)
16
14
15 7
182
10
9 3
1
2 3
4 5 6 7
8 9 10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: increase key (4)
16
15
14 7
182
10
9 3
1
2 3
4 5 6 7
8 9 10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Heap Sort
Finally, how can we get the keys sorted in an array A? We know that a heap is
not necessarily sorted as the following sequence illustrates:
A = < 100, 50, 25, 40, 30 >
Use the algorithm Heapsort():
Heapsort(A)
1. Build-Max-Heap(A)
2. for i  length[A] downto 2
3. do exchange A[1] ↔ A[i]
4. heap-size[A]  heap-size[A]-1
5. Max-Heapify(A,1)
Build-Max-Heap() is O(n), Max-Heapify() is O(lg n), but is executed n times,
so runtime for Heapsort(A) is O(nlgn).
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Heapsort
Heapsort(A)
1. Build-Max-Heap(A)
2. for i  length[A] downto 2
3. do exchange A[1] ↔ A[i]
4. heap-size[A]  heap-size[A]-1
5. Max-Heapify(A,1)
On line 1, we create the heap. Keep in mind that the largest element is at the
root. So, why not put the element that is currently in the root at the last index
of A[]?
We will exchange the last element in A, based on the value of heap-size[A],
with A[1], as per line 3.
Then we will reduce heap-size[A] by one so that we can make sure that
putting A[heap-size] into A[1] from line 3 doesn’t violate the heap property. But
we don’t want to touch the max element, so that’s why heap-size is reduced.
Continue in this fashion until i=2. Why don’t we care about i=1? It’s already done
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: Heap-Sort
16
14
8 7
142
10
9 3
1
2 3
4 5 6 7
8 9 10
16 14 10 8 7 9 3 2 4 1
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: Heap-Sort (2)
14
8
4 7
1612
10
9 3
1
2 3
4 5 6 7
8 9 10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: Heap-Sort (3)
10
8
4 7
16142
9
1 3
1
2 3
4 5 6 7
8 9 10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: Heap-Sort (4)
9
8
4 7
161410
3
1 2
1
2 3
4 5 6 7
8 9 10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: Heap-Sort (4)
8
7
4 2
161410
1
2 3
4 5 6 7
8 9 10
9
3
1
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: Heap-Sort (5)
7
4
1 2
161410
3
8 9
1
2 3
4 5 6 7
8 9 10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: Heap-Sort (6)
4
2
1 7
161410
3
8 9
1
2 3
4 5 6 7
8 9 10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: Heap-Sort (7)
3
2
4 7
161410
1
8 9
1
2 3
4 5 6 7
8 9 10
Department of Computer Science University of Peshawar
Heap Data Structure Advance Algorithms (Spring 2009)
Example: Heap-Sort (8)
2
1
4 7
161410
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Lec 17 heap data structure

  • 1. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Heap Data Structure Zahoor Jan
  • 2. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Heaps A (binary) heap data structure is an array object that can be viewed as a complete binary tree Each node of the tree corresponds to an element of the array that stores the value in the node A complete binary tree is one where all the internal nodes have exactly 2 children, and all the leaves are on the same level. The tree is completely filled on all levels except possibly the lowest, which is filled from left to right up to a point Leaf nodes are nodes without children.  Leaf node  Interior node Edge 
  • 3. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Heaps Height of a node: The number of edges starting at that node, and going down to the furthest leaf. Height of the heap: The maximum number of edges from the root to a leaf.  Root Height of blue node = 1 Height of root = 3
  • 4. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Heaps Complete binary tree– if not full, then the only unfilled level is filled in from left to right. 2 3 4 5 6 7 8 9 10 11 12 13 1 2 3 4 5 6 127 8 9 10 11 1 Parent(i) return i/2 Left(i) return 2i Right(i) return 2i + 1
  • 5. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Heaps The heap property of a tree is a condition that must be true for the tree to be considered a heap. Min-heap property: for min-heaps, requires A[parent(i)] ≤ A[i] So, the root of any sub-tree holds the least value in that sub-tree. Max-heap property: for max-heaps, requires A[parent(i)] ≥ A[i] The root of any sub-tree holds the greatest value in the sub-tree.
  • 6. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Heaps Looks like a max heap, but max-heap property is violated at indices 11 and 12. Why? because those nodes’ parents have smaller values than their children. 2 8 3 8 4 8 5 7 6 8 7 1 8 6 9 7 10 5 11 8 12 9 1 9
  • 7. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Heaps Assume we are given a tree represented by a linear array A, and such that i ≤ length[A], and the trees rooted at Left(i) and Right(i) are heaps. Then, to create a heap rooted at A[i], use procedure Max-Heapify(A,i): Max-Heapify(A,i) 1. l  Left(i) 2. r  Right(i) 3. if l ≤ heap-size[A] and A[l] > A[i] 4. then largest  l 5. else largest  i 6. if r ≤ heap-size[A] and A[r] > A[largest] 7. then largest  r 8. if largest ≠ i 9. then swap( A[i], A[largest]) Max-Heapify(A, largest) 20 9 19 18 6 7 17 16 17 16 1 10
  • 8. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Heaps If either child of A[i] is greater than A[i], the greatest child is exchanged with A[i]. So, A[i] moves down in the heap. The move of A[i] may have caused a violation of the max- heap property at it’s new location. So, we must recursively call Max-Heapify(A,i) at the location i where the node “lands”. The above is the top-down approach of Max-Heapify(A,i) 20 9 19 18 6 7 17 16 17 16 1 10
  • 9. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Max-Heapify(A,1) 20 9 19 18 6 7 17 16 17 16 1 10 10 9 19 18 6 7 17 16 17 16 1 20 10 9 19 18 6 7 17 16 17 16 1 20 19 9 10 18 6 7 17 16 17 16 1 20 19 9 10 18 6 7 17 16 17 16 1 20 19 9 17 18 6 7 10 16 17 16 1 20
  • 10. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Run Time of Max-Heapify() Run time of Max-Heapify(). How many nodes, in terms of n, is in the sub-tree with the most nodes? 2 n / 3 So, worst case would follow a path that included the most nodes T(n) = T(2n/3) + Θ(1) Why Θ(1)? Note that all the work in lines 1-7 is simple assignments or comparisons, so they are constant time, or Θ(1). 2 1 2 3 4 5 6 7 8 9 10 11 1 2 3 4 5 1 2(2) / 3 = 2 1 ≤ 2 2(5) / 3 = 3 3 ≤ 3 2(11) / 3 = 8 7 ≤ 8
  • 11. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Heaps So, what must we do to build a heap? We call Max-Heapify(A,i) for every i starting at last node and going to the root. Why Bottom-up? Because Max-Heapify() moves the larger node upward into the root. If we start at the top and go to larger node indices, the highest a node can move is to the root of that sub-tree. But what if there is a violation between the sub-tree’s root and its parent? So, we must start from the bottom and go towards the root to fix the problems caused by moving larger nodes into the root of sub-trees.
  • 12. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Heaps Bad-Build-Max-Heap(A) 1. heap-size[A]  length[A] 2. for i  length[A] downto 1 3. do Max-Heapify(A,i) Can this implementation be improved? Sure can! 2 3 4 5 6 7 8 9 10 11 1
  • 13. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Heaps Without going through a formal proof, notice that there is no need to call Max-Heapify() on leaf nodes. At most, the internal node with the largest index is at most equal to length[A]/2. Since this may be odd, should we use the floor or the ceiling? In the case below, it is clear that we really need the floor of length[A]/2 which is 5, and not the ceiling, which is 6. Build-Max-Heap(A) 1. heap-size[A]  length[A] 2. for i  length[A]/2 downto 1 3. do Max-Heapify(A,i) 2 3 4 5 6 7 8 9 10 11 1
  • 14. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: building a heap (1) 4 1 3 2 16 9 10 14 8 7 1 2 3 4 5 6 7 8 9 10 4 1 2 16 7814 3 9 10 1 2 3 4 5 6 7 8 9 10
  • 15. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: building a heap (2) 4 1 2 16 7814 3 9 10 1 2 3 4 5 6 7 8 9 10
  • 16. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: building a heap (4) 4 1 14 16 782 3 9 10 1 2 3 4 5 6 7 8 9 10
  • 17. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: building a heap (5) 4 1 14 16 782 10 9 3 1 2 3 4 5 6 7 8 9 10
  • 18. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: building a heap (6) 4 16 14 7 182 10 9 3 1 2 3 4 5 6 7 8 9 10
  • 19. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: building a heap (7) 16 14 8 7 142 10 9 3 1 2 3 4 5 6 7 8 9 10
  • 20. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Priority Queues A priority queue is a data structure for maintaining a set S of elements, each with an associated value called a key. We will only consider a max-priority queue. If we give the key a meaning, such as priority, so that elements with the highest priority have the highest value of key, then we can use the heap structure to extract the element with the highest priority.
  • 21. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Priority Queues Max priority queue supports the following operations: Max-Heap-Insert(A,key): insert key into heap, maintaining heap property Heap-Maximum(A): returns the heap element with the largest key Heap-Extract-Max(A): returns and removes the heap element with the largest key, and maintains the heap property Heap-Increase-Key(A,i,key): used (at least) by Max-Heap-Insert() to set A[i]  A[key], and then maintaining the heap property.
  • 22. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Priority Queues Heap-Maximum(A) 1. return A[1] Heap-Extract-Max(A) 1. if heap-size[A] < 1 2. then error “heap underflow” 3. max  A[1] 4. A[1]  A[heap-size[A] ] 5. heap-size[A]  heap-size[A] - 1 6. Max-Heapify(A,1) 7. return max
  • 23. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Priority Queues Heap-Increase-Key(A,i,key) 1. if key < A[i] 2. then error “new key is smaller than current key” 3. A[i]  key 4. while i > 1 and A[Parent(i)] < A[i] 5. do exchange A[i]  A[Parent(i)] 6. i  Parent(i) Max-Heap-Insert(A,key) 1. heap-size[A]  heap-size[A]+1 2. A[heap-size[A]]  – ∞ 3. Heap-Increase-Key(A, heap-size[A], key)
  • 24. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: increase key (1) 16 14 8 7 142 10 9 3 1 2 3 4 5 6 7 8 9 10 increase 4 to 15
  • 25. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: increase key (2) 16 14 8 7 1152 10 9 3 1 2 3 4 5 6 7 8 9 10
  • 26. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: increase key (3) 16 14 15 7 182 10 9 3 1 2 3 4 5 6 7 8 9 10
  • 27. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: increase key (4) 16 15 14 7 182 10 9 3 1 2 3 4 5 6 7 8 9 10
  • 28. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Heap Sort Finally, how can we get the keys sorted in an array A? We know that a heap is not necessarily sorted as the following sequence illustrates: A = < 100, 50, 25, 40, 30 > Use the algorithm Heapsort(): Heapsort(A) 1. Build-Max-Heap(A) 2. for i  length[A] downto 2 3. do exchange A[1] ↔ A[i] 4. heap-size[A]  heap-size[A]-1 5. Max-Heapify(A,1) Build-Max-Heap() is O(n), Max-Heapify() is O(lg n), but is executed n times, so runtime for Heapsort(A) is O(nlgn).
  • 29. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Heapsort Heapsort(A) 1. Build-Max-Heap(A) 2. for i  length[A] downto 2 3. do exchange A[1] ↔ A[i] 4. heap-size[A]  heap-size[A]-1 5. Max-Heapify(A,1) On line 1, we create the heap. Keep in mind that the largest element is at the root. So, why not put the element that is currently in the root at the last index of A[]? We will exchange the last element in A, based on the value of heap-size[A], with A[1], as per line 3. Then we will reduce heap-size[A] by one so that we can make sure that putting A[heap-size] into A[1] from line 3 doesn’t violate the heap property. But we don’t want to touch the max element, so that’s why heap-size is reduced. Continue in this fashion until i=2. Why don’t we care about i=1? It’s already done
  • 30. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: Heap-Sort 16 14 8 7 142 10 9 3 1 2 3 4 5 6 7 8 9 10 16 14 10 8 7 9 3 2 4 1
  • 31. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: Heap-Sort (2) 14 8 4 7 1612 10 9 3 1 2 3 4 5 6 7 8 9 10
  • 32. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: Heap-Sort (3) 10 8 4 7 16142 9 1 3 1 2 3 4 5 6 7 8 9 10
  • 33. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: Heap-Sort (4) 9 8 4 7 161410 3 1 2 1 2 3 4 5 6 7 8 9 10
  • 34. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: Heap-Sort (4) 8 7 4 2 161410 1 2 3 4 5 6 7 8 9 10 9 3 1
  • 35. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: Heap-Sort (5) 7 4 1 2 161410 3 8 9 1 2 3 4 5 6 7 8 9 10
  • 36. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: Heap-Sort (6) 4 2 1 7 161410 3 8 9 1 2 3 4 5 6 7 8 9 10
  • 37. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: Heap-Sort (7) 3 2 4 7 161410 1 8 9 1 2 3 4 5 6 7 8 9 10
  • 38. Department of Computer Science University of Peshawar Heap Data Structure Advance Algorithms (Spring 2009) Example: Heap-Sort (8) 2 1 4 7 161410 3 8 9 1 2 3 4 5 6 7 8 9 10 1 2 3 4 7 8 9 10 14 16