Binary Trees - PowerPoint PPT Presentation

1 / 57
About This Presentation
Title:

Binary Trees

Description:

Discover how to insert and delete items in a binary search tree ... Number of comparisons required to insert x in T same as the number of ... – PowerPoint PPT presentation

Number of Views:31
Avg rating:3.0/5.0
Slides: 58
Provided by: manasi95
Category:
Tags: binary | insert | trees

less

Transcript and Presenter's Notes

Title: Binary Trees


1
Chapter 11
  • Binary Trees

2
Chapter Objectives
  • Learn about binary trees
  • Explore various binary tree traversal algorithms
  • Learn how to organize data in a binary search
    tree
  • Discover how to insert and delete items in a
    binary search tree
  • Explore nonrecursive binary tree traversal
    algorithms
  • Learn about AVL (height-balanced) trees

3
Binary Trees
  • Definition A binary tree, T, is either empty or
    such that
  • T has a special node called the root node
  • T has two sets of nodes, LT and RT, called the
    left subtree and right subtree of T,
    respectively
  • LT and RT are binary trees

4
Binary Tree
5
Binary Tree With One Node
The root node of the binary tree A LA
empty RA empty
6
Binary Trees With Two Nodes
7
Binary Trees With Two Nodes
8
Various Binary Trees With Three Nodes
9
Binary Trees
  • Following struct defines the node of a binary
    tree
  • templateltclass elemTypegt
  • struct nodeType
  • elemType info
  • nodeTypeltelemTypegt llink
  • nodeTypeltelemTypegt rlink

10
Nodes
  • For each node
  • Data is stored in info
  • The pointer to the left child is stored in llink
  • The pointer to the right child is stored in rlink

11
General Binary Tree
12
Binary Tree Definitions
  • Leaf node that has no left and right children
  • Parent node with at least one child node
  • Level of a node number of branches on the path
    from root to node
  • Height of a binary tree number of nodes no the
    longest path from root to node

13
Height of a Binary Tree
  • Recursive algorithm to find height of binary
    tree
  • (height(p) denotes height of binary tree with
    root p)
  • if(p is NULL)
  • height(p) 0
  • else
  • height(p) 1 max(height(p-gtllink),
    height(p-gtrlink))

14
Height of a Binary Tree
  • Function to implement above algorithm
  • templateltclass elemTypegt
  • int height(nodeTypeltelemTypegt p)
  • if(p NULL)
  • return 0
  • else
  • return 1 max(height(p-gtllink),
  • height(p-gtrlink))

15
Copy Tree
  • Useful operation on binary trees is to make
    identical copy of binary tree
  • Use function copyTree when we overload assignment
    operator and implement copy constructor

16
Copy Tree
  • templateltclass elemTypegt
  • void copyTree(nodeTypeltelemTypegt
    copiedTreeRoot,
  • nodeTypeltelemTypegt otherTreeRoot)
  • if(otherTreeRoot NULL)
  • copiedTreeRoot NULL
  • else
  • copiedTreeRoot new nodeTypeltelemTypegt
  • copiedTreeRoot-gtinfo otherTreeRoot-gtinfo
  • copyTree(copiedTreeRoot-gtllink,
    otherTreeRoot-gtllink)
  • copyTree(copiedTreeRoot-gtrlink,
    otherTreeRoot-gtrlink)
  • //end copyTree

17
Binary Tree Traversal
  • Must start with the root, then
  • Visit the node first or
  • Visit the subtrees first
  • Three different traversals
  • Inorder
  • Preorder
  • Postorder

18
Traversals
  • Inorder
  • Traverse the left subtree
  • Visit the node
  • Traverse the right subtree
  • Preorder
  • Visit the node
  • Traverse the left subtree
  • Traverse the right subtree

19
Traversals
  • Postorder
  • Traverse the left subtree
  • Traverse the right subtree
  • Visit the node

20
Binary Tree Inorder Traversal
21
Binary Tree Inorder Traversal
templateltclass elemTypegt void inorder(nodeTypeltele
mTypegt p) if(p ! NULL)
inorder(p-gtllink) coutltltp-gtinfoltlt
inorder(p-gtrlink)
22
Binary Tree Traversals
templateltclass elemTypegt void postorder(nodeTypelte
lemTypegt p) if(p ! NULL)
postorder(p-gtllink) postorder(p-gtrlink)
coutltltp-gtinfoltlt 1
templateltclass elemTypegt void preorder(nodeTypeltel
emTypegt p) if(p ! NULL)
coutltltp-gtinfoltlt preorder(p-gtllink)
preorder(p-gtrlink)
23
Implementing Binary Trees class binaryTreeType
Functions
  • Public
  • isEmpty
  • inorderTraversal
  • preorderTraversal
  • postorderTraversal
  • treeHeight
  • treeNodeCount
  • treeLeavesCount
  • destroyTree
  • Private
  • copyTree
  • Destroy
  • Inorder, preorder, postorder
  • Height
  • Max
  • nodeCount
  • leavesCount

24
Binary Search Trees
  • Data in each node
  • Larger than the data in its left child
  • Smaller than the data in its right child
  • A binary search tree,t, is either empty or
  • T has a special node called the root node
  • T has two sets of nodes, LT and RT, called the
    left subtree and right subtree of T, respectively
  • Key in root node larger than every key in left
    subtree and smaller than every key in right
    subtree
  • LT and RT are binary search trees

25
Binary Search Trees
26
Operations Performed on Binary Search Trees
  • Determine whether the binary search tree is empty
  • Search the binary search tree for a particular
    item
  • Insert an item in the binary search tree
  • Delete an item from the binary search tree

27
Operations Performed on Binary Search Trees
  • Find the height of the binary search tree
  • Find the number of nodes in the binary search
    tree
  • Find the number of leaves in the binary search
    tree
  • Traverse the binary search tree
  • Copy the binary search tree

28
Binary Search Tree Analysis
Worst Case Linear tree
29
Binary Search Tree Analysis
  • Theorem Let T be a binary search tree with n
    nodes, where n gt 0.The average number of nodes
    visited in a search of T is approximately
    1.39log2n
  • Number of comparisons required to determine
    whether x is in T is one more than the number of
    comparisons required to insert x in T
  • Number of comparisons required to insert x in T
    same as the number of comparisons made in
    unsuccessful search, reflecting that x is not in T

30
Binary Search Tree Analysis
  • It follows that

It is also known that
Solving Equations (11-1) and (11-2)
31
Nonrecursive Inorder Traversal
32
Nonrecursive Inorder Traversal General Algorithm
  • current root //start traversing the binary
    tree at
  • // the root node
  • while(current is not NULL or stack is nonempty)
  • if(current is not NULL)
  • push current onto stack
  • current current-gtllink
  • else
  • pop stack into current
  • visit current //visit the node
  • current current-gtrlink //move to
    the
  • //right
    child

33
Nonrecursive Preorder Traversal General Algorithm
  • 1. current root //start the traversal at the
    root node
  • 2. while(current is not NULL or stack is
    nonempty)
  • if(current is not NULL)
  • visit current
  • push current onto stack
  • current current-gtllink
  • else
  • pop stack into current
  • current current-gtrlink //prepare to
    visit
  • //the right
    subtree

34
Nonrecursive Postorder Traversal
  • current root //start traversal at root node
  • v 0
  • if(current is NULL)
  • the binary tree is empty
  • if(current is not NULL)
  • push current into stack
  • push 1 onto stack
  • current current-gtllink
  • while(stack is not empty)
  • if(current is not NULL and v is 0)
  • push current and 1 onto stack
  • current current-gtllink

35
Nonrecursive Postorder Traversal (Continued)
  • else
  • pop stack into current and v
  • if(v 1)
  • push current and 2 onto stack
  • current current-gtrlink
  • v 0
  • else
  • visit current

36
AVL (Height-balanced Trees)
  • A perfectly balanced binary tree is a binary tree
    such that
  • The height of the left and right subtrees of the
    root are equal
  • The left and right subtrees of the root are
    perfectly balanced binary trees

37
Perfectly Balanced Binary Tree
38
AVL (Height-balanced Trees)
  • An AVL tree (or height-balanced tree) is a binary
    search tree such that
  • The height of the left and right subtrees of the
    root differ by at most 1
  • The left and right subtrees of the root are AVL
    trees

39
AVL Trees
40
Non-AVL Trees
41
Insertion Into AVL Tree
42
Insertion Into AVL Trees
43
Insertion Into AVL Trees
44
Insertion Into AVL Trees
45
Insertion Into AVL Trees
46
AVL Tree Rotations
  • Reconstruction procedure rotating tree
  • left rotation and right rotation
  • Suppose that the rotation occurs at node x
  • Left rotation certain nodes from the right
    subtree of x move to its left subtree the root
    of the right subtree of x becomes the new root of
    the reconstructed subtree
  • Right rotation at x certain nodes from the left
    subtree of x move to its right subtree the root
    of the left subtree of x becomes the new root of
    the reconstructed subtree

47
AVL Tree Rotations
48
AVL Tree Rotations
49
AVL Tree Rotations
50
AVL Tree Rotations
51
AVL Tree Rotations
52
AVL Tree Rotations
53
Deletion From AVL Trees
  • Case 1 the node to be deleted is a leaf
  • Case 2 the node to be deleted has no right
    child, that is, its right subtree is empty
  • Case 3 the node to be deleted has no left child,
    that is, its left subtree is empty
  • Case 4 the node to be deleted has a left child
    and a right child

54
Analysis AVL Trees
Consider all the possible AVL trees of height h.
Let Th be an AVL tree of height h such that Th
has the fewest number of nodes. Let Thl denote
the left subtree of Th and Thr denote the right
subtree of Th. Then
where Th denotes the number of nodes in Th.
55
Analysis AVL Trees
Suppose that Thl is of height h 1 and Thr is of
height h 2. Thl is an AVL tree of height h 1
such that Thl has the fewest number of nodes
among all AVL trees of height h 1. Thr is an
AVL tree of height h 2 that has the fewest
number of nodes among all AVL trees of height h
2. Thl is of the form Th -1 and Thr is of the
form Th -2. Hence
56
Analysis AVL Trees
Let Fh2 Th 1. Then
Called a Fibonacci sequence solution to Fh is
given by
Hence
From this it can be concluded that
57
Chapter Summary
  • Binary trees
  • Binary search trees
  • Recursive traversal algorithms
  • Nonrecursive traversal algorithms
  • AVL trees
Write a Comment
User Comments (0)
About PowerShow.com