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Binary Search Tree
What is a Binary Tree? 
 Property 1: Each node can have up to two 
successor nodes.
What is a Binary Tree? 
• Property 2: a unique path exists from the root 
to every other node 
Not a valid binary tree!
A Binary Tree
Binary Tree 
typedef struct tnode *ptnode; 
typedef struct node { 
short int key; 
ptnode right, left; 
} ;
Basic Terminology 
 The successor nodes of a node are called its children 
 The predecessor node of a node is called its parent 
 The "beginning" node is called the root (has no parent) 
 A node without children is called a leaf
Basic Terminology 
 Nodes are organize in levels (indexed from 0). 
 Level (or depth) of a node: number of edges in the path 
from the root to that node. 
 Height of a tree h: #levels = L 
(some books define h as 
number of levels-1). 
 Full tree: every node has exactly 
two children and all the leaves are 
on the same level. 
not full!
What is the max number of nodes 
at any level l ? 
The maximum number of nodes at any level l is less 
than or equal to 2l where l=0, 1, 2, 3,….. L-1 
where l=0,1,2, ...,L-1 
£ 20 
£ 21 
£ 22 
£ 23
What is the total number of nodes N 
of a full tree with height h? 
h - 
h 
0 1 1 
= + + + = - 
2 2 ... 2 2 1 
Derived according to the geometric series: 
- 
1 
+ + + = å = 
- - 
0 1 1 1 
1 
... n 
0 
n 
n i x 
x 
i 
N 
x x x x 
- 
= 
l=0 l=1 l=h-1
What is the height h 
of a full tree with N nodes? 
2 - 1 
= 
Þ 2 = + 
1 
Þ = + ® 
log( 1) (log ) 
h 
h 
N 
N 
h N O N
Why is h important? 
 The Tree operations like insert, delete, retrieve etc. 
are typically expressed in terms of the height of the 
tree h. 
 So, it can be stated that the tree height h determines 
running time!
 What is the mmaaxx hheeiigghhtt of a tree 
with N nodes? 
N (same as a linked list) 
 What is the mmiinn hheeiigghhtt of a tree with 
N nodes? 
log(N+1)
Binary Search 
 Suppose DATA is an array which is sorted in increasing 
numerical order and we want to find the location LOC of a given 
ITEM in DATA. Then there is an extremely efficient searching 
algorithm called Binary Search.
Binary Search 
 Consider that you want to find the location of some word in a 
dictionary. 
 I guess you are not fool enough to search it in a linear way or in 
other words apply linear search. That is no one search page by 
page from the start to end of the book. 
 Rather, I guess you will open or divide the dictionary in the 
middle to determine which half contains the word. 
 Then consider new probable half and open or divide that half in 
the middle to determine which half contains the word. This 
process goes on. 
 Eventually you will find the location of the word and thus you 
are reducing the number of possible locations for the word in the 
dictionary.
How to search a binary tree? 
1. Start at the root 
2. Search the tree level by level, 
until you find the element you 
are searching for or you reach 
a leaf. 
Is this better than searching a linked list? 
No  O(N)
Binary Search Trees 
 Binary Search Tree Property: 
The value stored at 
a node is greater than 
the value stored at its 
left child and less than 
the value stored at its 
right child
Binary Search Trees 
 In a BST, the value 
stored at the root of 
a subtree is greater 
than any value in its 
left subtree and less 
than any value in its 
right subtree!
Binary Search Trees 
Where is the smallest 
element? 
Ans: leftmost element 
Where is the largest 
element? 
Ans: rightmost element
How to search a binary search 
tree? 
1. Start at the root 
2. Compare the value of 
the item you are 
searching for with the 
value stored at the root 
3. If the values are equal, 
then item found; 
otherwise, if it is a leaf 
node, then not found
How to search a binary search 
tree? 
4. If it is less than the value 
stored at the root, then 
search the left subtree 
5. If it is greater than the 
value stored at the root, 
then search the right 
subtree 
6. Repeat steps 2-6 for the 
root of the subtree 
chosen in the previous 
step 4 or 5
How to search a binary search 
tree? 
Is this better than searching 
a linked list? 
Yes !!   O(logN)
Difference between BT and BST 
 A binary tree is simply a tree in which each node can have 
at most two children. 
 A binary search tree is a binary tree in which the nodes are 
assigned values, with the following restrictions : 
1. No duplicate values. 
2. The left subtree of a node can only have values less than 
the node 
3. The right subtree of a node can only have values greater 
than the node and recursively defined 
4. The left subtree of a node is a binary search tree. 
5. The right subtree of a node is a binary search tree.
Binary Tree Search Algorithm 
 Let x be a node in a binary search tree and k is the 
value, we are supposed to search. 
 Then according to the binary search tree property we 
know that: if y is a node in the left subtree of x, then 
y.key <= x.key. If y is a node in the right subtree of x, 
then y.key>=x.key. (x.key denotes the value at node x) 
 To search the location of given data k, the binary search 
tree algorithm begins its search at the root and traces 
the path downward in the tree. 
 For each node x it compares the value k with x.key. If 
the values are equal then the search terminates and x is 
the desired node.
Binary Tree Search Algorithm 
 If k is smaller than x.key, then the search continues in 
the left subtree of x, since the binary search tree 
property implies that k could not be in the right subtree. 
 Symmetrically, if k is larger than x.key, then the search 
continues in the right subtree. 
 The nodes encountered during the recursion form a 
simple path downward from the root of the tree, and 
thus the running time of TREE-SEARCH is O(h), where h 
is the height of the tree.
Binary Tree Search Algorithm 
TREE-SEARCH(x,k) 
1.If x==NIL or k==x.key 
2. return x 
3.If k < x.key 
4. return TREE-SEARCH(x.left,k) 
5.else return TREE-SEARCH(x.right,k)
Binary Tree Search Algorithm 
6 6 
Example: key =4 then find(4) 
2 2 9 9 
1 1 4 4 8 8 
Call TREE-SEARCH(x,k)
Binary Tree Search Algorithm 
6 6 
Example: k =4 and x=root 
2 2 9 9 
1 1 4 4 8 8 
Call TREE-SEARCH(root,4) 
Now x.key=6 then k<x.key 
So call TREE-SEARCH(x.left,k) 
x=root
Binary Tree Search Algorithm 
6 6 
Example: k =4 and x=root.left 
2 2 9 9 
1 1 4 4 8 8 
Call TREE-SEARCH(x,4) 
Now x.key=2 then k>x.key 
TREE-SEARCH(x.right,k) 
x=root.left
Binary Tree Search Algorithm 
6 6 
Example: k =4 and x=root.left.right 
2 2 9 9 
1 1 4 4 8 8 
Call TREE-SEARCH(x,4) 
Now x.key=4 then k=x.key 
Search terminates 
x=root.left.right
Binary Tree Search Algorithm 
6 6 
Example: k =4 and x=root.left.right 
2 2 9 9 
1 1 4 4 8 8 
Now x.key=4 then k=x.key 
Search terminates and 
x=root.left.right is the desired 
node or location 
x=root.left.right
Animation of How Works in a 
Sorted Data Array
BST - Pseudo code 
if the tree is empty 
return NULL 
else if the key value in the node(root) equals the target 
return the node value 
else if the key value in the node is greater than the target 
return the result of searching the left subtree 
else if the key value in the node is smaller than the target 
return the result of searching the right subtree
Search in a BST: C code 
Ptnode search(ptnode root, 
int key) 
{ 
/* return a pointer to the node that 
contains key. If there is no such 
node, return NULL */ 
if (!root) return NULL; 
if (key == root->key) return root; 
if (key < root->key) 
return search(root->left,key); 
return search(root->right,key); 
}
Minimum Key or Element 
 We can always find an element in a binary search tree 
whose key is minimum by following the left children from 
the root until we encounter a NIL. 
 Otherwise if a node x has no left subtree then the value 
x.key contained in root x is the minimum key or element. 
The procedure for finding the minimum key: 
 TREE-MINIMUM(x) 
1. while x.left ≠ NIL 
2. x = x.left 
3. return x
Maximum Key or Element 
 We can always find an element in a binary search tree 
whose key is maximum by following the right children from 
the root until we encounter a NIL. 
 Otherwise if a node x has no right subtree then the value 
x.key contained in root x is the maximum key or element. 
The procedure for finding the maximum key: 
 TREE-MAXIMUM(x) 
1. while x.right ≠ NIL 
2. x = x.right 
3. return x
Insert a value into the BST 
 To insert a new value v into a binary search tree T, we use 
the procedure TREE-INSERT. 
 The procedure takes a node z for which z.key=v , z.left=NIL 
and z.right=NIL. 
 It modifies T and some of the attributes of z in such a way 
that it inserts z into an appropriate position in the tree
Insert a value into the BST 
 Suppose v is the value we want to insert and z is the node (New 
or NIL) we are supposed to find to insert the value v. 
z.p denotes the parent of z. 
 X is a pointer that traces a simple path downward the tree and y 
is the trailing pointer as the parent of x. T.root denote the root 
of the tree. 
 Now the intention is to find a new or NIL node that will satisfy 
the BST property after placing the value v. The procedure first 
consider x as the root of the tree thus the parent of the root 
y=NIL. 
 In steps 3 to 7 the procedure causes the two pointer y and x to 
move down the tree, going left or right depending on the 
comparison of z.key with x.key, until x becomes NIL.
Insert a value into the BST 
 Now this NIL occupies the position z, where we wish to place the 
input item. 
 At this time we need y the parent of the desired node. This is why 
at step four we always storing the parent of current node x while 
moving downward. At the end of step 7 (in step 8) we make this 
node the parent of z (z.p). 
 From steps 9 to 11: 
 Now if tree is empty (y==NIL) then create a root node with the 
new key(T.root=z) 
 If the value v is less than the value of the parent(z.key<y.key) 
then make it as the left-child of the parent(y.left=z) 
 If the value v is greater than the value of the parent(z.key>y.key) 
then make it as the right-child of the parent(y.right=z)
Insert a value into the BST 
 TREE-INSERT(T , z) 
1. y=NIL 
2. x= T.root 
3. While x ≠ NIL 
4. y=x 
5. if z.key<x.key 
6. x=x.left 
7. else x=x.right 
8. z.p=y 
9. if y== NIL 
10. T.root = z 
11.elseif z.key < y.key 
12. y.left=z 
13.else y.right = z
BST Insertion Algorithm 
6 6 
2 2 9 9 
1 1 4 4 8 8 
We are supposed to insert 
an item value 5 and find an 
appropriate node z for it
BST Insertion Algorithm 
6 6 
x=T.root 
2 2 9 9 
1 1 4 4 8 8 
Y=NIL and x=T.root
BST Insertion Algorithm 
6 6 
x=T.root 
2 2 9 9 
1 1 4 4 8 8 
Now x≠NIL and z.key<x.key 
That is [5<6]
BST Insertion Algorithm 
6 6 
2 2 9 9 
x 
1 1 4 4 8 8 
Y=T.root and x=T.root.left 
And z.key>x.key[5>2] 
y
BST Insertion Algorithm 
6 6 
2 2 9 9 
x 
1 1 4 4 8 8 
Y=T.root.left and 
x=T.root.left.right 
And z.key>x.key[5>4] 
y
BST Insertion Algorithm 
6 6 
2 2 9 9 
y 
1 1 4 4 8 8 
Y=T.root.left.right and x=NIL 
Then z.p=T.root.left.right
BST Insertion Algorithm 
6 6 
2 2 9 9 
y 
1 1 4 4 8 8 
Y=T.root.left.right [y ≠ NIL] 
And z.key>y.key [5>4] 
So y.right=z that is 
T.root.left.right.right=z 
z 5
Insertion in BST – Pseudo code 
if tree is empty 
create a root node with the new key 
else 
compare key with the top node 
if key = node key 
replace the node with the new value 
else if key > node key 
compare key with the right subtree: 
if subtree is empty create a leaf node 
else add key in right subtree 
else key < node key 
compare key with the left subtree: 
if the subtree is empty create a leaf node 
else add key to the left subtree
Insertion into a BST: C code 
void insert (ptnode *node, int key) 
{ 
ptnode ptr, 
temp = search(*node, key); 
if (temp || !(*node)) { 
ptr = (ptnode) malloc(sizeof(tnode)); 
if (IS_FULL(ptr)) { 
fprintf(stderr, “The memory is fulln”); 
exit(1); 
} 
ptr->key = key; 
ptr->left = ptr->right = NULL; 
if (*node) 
if (key<temp->key) temp->left=ptr; 
else temp->right = ptr; 
else *node = ptr; 
} 
}
Delete a value from the BST 
 Removing a node from a BST is a bit more complex, since we do 
not want to create any "holes" in the tree. The intention is to 
remove the specified item from the BST and adjusts the tree 
 The binary search algorithm is used to locate the target item: 
starting at the root it probes down the tree till it finds the 
target or reaches a leaf node (target not in the tree) 
 If the node has one child then the child is spliced to the parent 
of the node. If the node has two children then its successor has 
no left child; copy the successor into the node and delete the 
successor instead TREE-DELETE (T, z) removes the node 
pointed to by z from the tree T. IT returns a pointer to the node 
removed so that the node can be put on a free-node list 
 The overall strategy for deleting a node or item from a binary 
search tree can be described through some cases.
Delete a value from the BST 
Experimenting the cases: 
 if the tree is empty return false 
 else Attempt to locate the node containing the target 
using the binary search algorithm: 
if the target is not found return false 
else the target is found, then remove its node. Now 
while removing the node four cases may happen
Delete a value from the BST 
Case 1: if the node has 2 empty subtrees 
- replace the link in the parent with null 
Case 2: if the node has a left and a right subtree 
- replace the node's value with the max value in the 
left subtree 
- delete the max node in the left subtree 
Case 3: if the node has no left child 
- link the parent of the node to the right 
(non-empty) subtree 
Case 4: if the node has no right child 
- link the parent of the target to the left 
(non-empty) subtree
Delete a value from the BST 
Case 1: removing a node with 2 EMPTY SUBTREES 
-replace the link in the parent with null 
Parent 
Z 
Removing 4 
5 5 
4 4 
7 7 
9 9 
66 88 1100 
7 7 
5 5 
6 6 
9 9 
88 1100
Delete a value from the BST 
Case 2: removing a node with 2 SUBTREES 
- replace the node's value with the max value in the left subtree 
- delete the max node in the left subtree 
Z Removing 7 
5 5 
4 4 
7 7 
9 9 
66 88 1100 
6 6 
5 5 
4 4 8 8 
9 9 
1100
Delete a value from the BST 
Case 3: if the node has no left child 
- link the parent of the node to the right (non-empty) subtree 
Z 
Removing 5 
5 5 
7 7 
9 9 
66 88 1100 
7 7 
8 8 
9 9 
1100 
Parent Parent 
6 6
Delete a value from the BST 
Case 4: if the node has no right child 
- link the parent of the node to the left (non-empty) subtree 
Z 
Removing 5 
5 5 
7 7 
9 9 
88 1100 
7 7 
8 8 
9 9 
1100 
Parent Parent 
4 4 
4 4
BST Deletion Algorithm 
• TREE-DELETE (T, z) 
1. if left [z] = NIL .OR. right[z] = NIL 
2. then y ← z 
3. else y ← TREE-SUCCESSOR (z) 
4. if left [y] ≠ NIL 
5. then x ← left[y] 
6. else x ← right [y] 
7. if x ≠ NIL 
8. then p[x] ← p[y] 
9. if p[y] = NIL 
10. then root [T] ← x 
11. else if y = left [p[y]] 
12. then left [p[y]] ← x 
13. else right [p[y]] ← x 
14. if y ≠ z 
15. then key [z] ← key [y] 
16. if y has other field, copy them, too 
17. return y
Analysis of BST Operations 
 The complexity of operations search, insert and 
remove in BST is O(h) , where h is the height. 
 When the tree is balanced then it is O(log n). The 
updating operations cause the tree to become 
unbalanced. 
 The tree can degenerate to a linear shape and the 
operations will become O (n)
Applications for BST 
 Binary Search Tree: Used in many search applications where data is 
constantly entering/leaving, such as the map and set objects in many 
languages' libraries. 
 Binary Space Partition: Used in almost every 3D video game to 
determine what objects need to be rendered. 
 Binary Tries: Used in almost every high-bandwidth router for storing 
router-tables. 
 Heaps: Used in implementing efficient priority-queues. Also used in 
heap-sort. 
 Huffman Coding Tree:- used in compression algorithms, such as 
those used by the .jpeg and .mp3 file-formats. 
 GGM Trees - Used in cryptographic applications to generate a tree of 
pseudo-random numbers. 
 Syntax Tree: Constructed by compilers and (implicitly) calculators to 
parse expressions.
What is a Degenerate BST? 
 A degenerate binary search tree is one where most or 
all of the nodes contain only one sub node. 
 It is unbalanced and, in the worst case, performance 
degrades to that of a linked list. 
 If your add node function does not handle rebalancing, 
then you can easily construct a degenerate tree by 
feeding it data that is already sorted.
Does the order of inserting 
elements into a tree matter? 
 Yes, certain orders might produce very 
unbalanced trees or degenerated trees! 
 Unbalanced trees are not desirable because search 
time increases! 
 Advanced tree structures, such as red-black 
trees, AVL trees, guarantee balanced trees.
Does the 
order of 
inserting 
elements 
into a tree 
matter?
Better Search Trees 
Prevent the degeneration of the BST : 
 A BST can be set up to maintain balance during updating 
operations (insertions and removals) 
 Types of ST which maintain the optimal performance in 
other words balanced trees: 
– splay trees 
– AVL trees 
– 2-4 Trees 
– Red-Black trees 
– B-trees
References 
 Introduction to Algorithms by Thomas H. Cormen 
and others 
 Binary Search Tree by Penelope Hofsdal 
 Rada Mihalcea 
http://www.cs.unt.edu/~rada/CSCE3110
MD. Shakhawat Hossain 
Student of Computer Science & Engineering Dept. 
University of Rajshahi

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Binary Search Tree

  • 2. What is a Binary Tree?  Property 1: Each node can have up to two successor nodes.
  • 3. What is a Binary Tree? • Property 2: a unique path exists from the root to every other node Not a valid binary tree!
  • 5. Binary Tree typedef struct tnode *ptnode; typedef struct node { short int key; ptnode right, left; } ;
  • 6. Basic Terminology  The successor nodes of a node are called its children  The predecessor node of a node is called its parent  The "beginning" node is called the root (has no parent)  A node without children is called a leaf
  • 7. Basic Terminology  Nodes are organize in levels (indexed from 0).  Level (or depth) of a node: number of edges in the path from the root to that node.  Height of a tree h: #levels = L (some books define h as number of levels-1).  Full tree: every node has exactly two children and all the leaves are on the same level. not full!
  • 8. What is the max number of nodes at any level l ? The maximum number of nodes at any level l is less than or equal to 2l where l=0, 1, 2, 3,….. L-1 where l=0,1,2, ...,L-1 £ 20 £ 21 £ 22 £ 23
  • 9. What is the total number of nodes N of a full tree with height h? h - h 0 1 1 = + + + = - 2 2 ... 2 2 1 Derived according to the geometric series: - 1 + + + = å = - - 0 1 1 1 1 ... n 0 n n i x x i N x x x x - = l=0 l=1 l=h-1
  • 10. What is the height h of a full tree with N nodes? 2 - 1 = Þ 2 = + 1 Þ = + ® log( 1) (log ) h h N N h N O N
  • 11. Why is h important?  The Tree operations like insert, delete, retrieve etc. are typically expressed in terms of the height of the tree h.  So, it can be stated that the tree height h determines running time!
  • 12.  What is the mmaaxx hheeiigghhtt of a tree with N nodes? N (same as a linked list)  What is the mmiinn hheeiigghhtt of a tree with N nodes? log(N+1)
  • 13. Binary Search  Suppose DATA is an array which is sorted in increasing numerical order and we want to find the location LOC of a given ITEM in DATA. Then there is an extremely efficient searching algorithm called Binary Search.
  • 14. Binary Search  Consider that you want to find the location of some word in a dictionary.  I guess you are not fool enough to search it in a linear way or in other words apply linear search. That is no one search page by page from the start to end of the book.  Rather, I guess you will open or divide the dictionary in the middle to determine which half contains the word.  Then consider new probable half and open or divide that half in the middle to determine which half contains the word. This process goes on.  Eventually you will find the location of the word and thus you are reducing the number of possible locations for the word in the dictionary.
  • 15. How to search a binary tree? 1. Start at the root 2. Search the tree level by level, until you find the element you are searching for or you reach a leaf. Is this better than searching a linked list? No  O(N)
  • 16. Binary Search Trees  Binary Search Tree Property: The value stored at a node is greater than the value stored at its left child and less than the value stored at its right child
  • 17. Binary Search Trees  In a BST, the value stored at the root of a subtree is greater than any value in its left subtree and less than any value in its right subtree!
  • 18. Binary Search Trees Where is the smallest element? Ans: leftmost element Where is the largest element? Ans: rightmost element
  • 19. How to search a binary search tree? 1. Start at the root 2. Compare the value of the item you are searching for with the value stored at the root 3. If the values are equal, then item found; otherwise, if it is a leaf node, then not found
  • 20. How to search a binary search tree? 4. If it is less than the value stored at the root, then search the left subtree 5. If it is greater than the value stored at the root, then search the right subtree 6. Repeat steps 2-6 for the root of the subtree chosen in the previous step 4 or 5
  • 21. How to search a binary search tree? Is this better than searching a linked list? Yes !!   O(logN)
  • 22. Difference between BT and BST  A binary tree is simply a tree in which each node can have at most two children.  A binary search tree is a binary tree in which the nodes are assigned values, with the following restrictions : 1. No duplicate values. 2. The left subtree of a node can only have values less than the node 3. The right subtree of a node can only have values greater than the node and recursively defined 4. The left subtree of a node is a binary search tree. 5. The right subtree of a node is a binary search tree.
  • 23. Binary Tree Search Algorithm  Let x be a node in a binary search tree and k is the value, we are supposed to search.  Then according to the binary search tree property we know that: if y is a node in the left subtree of x, then y.key <= x.key. If y is a node in the right subtree of x, then y.key>=x.key. (x.key denotes the value at node x)  To search the location of given data k, the binary search tree algorithm begins its search at the root and traces the path downward in the tree.  For each node x it compares the value k with x.key. If the values are equal then the search terminates and x is the desired node.
  • 24. Binary Tree Search Algorithm  If k is smaller than x.key, then the search continues in the left subtree of x, since the binary search tree property implies that k could not be in the right subtree.  Symmetrically, if k is larger than x.key, then the search continues in the right subtree.  The nodes encountered during the recursion form a simple path downward from the root of the tree, and thus the running time of TREE-SEARCH is O(h), where h is the height of the tree.
  • 25. Binary Tree Search Algorithm TREE-SEARCH(x,k) 1.If x==NIL or k==x.key 2. return x 3.If k < x.key 4. return TREE-SEARCH(x.left,k) 5.else return TREE-SEARCH(x.right,k)
  • 26. Binary Tree Search Algorithm 6 6 Example: key =4 then find(4) 2 2 9 9 1 1 4 4 8 8 Call TREE-SEARCH(x,k)
  • 27. Binary Tree Search Algorithm 6 6 Example: k =4 and x=root 2 2 9 9 1 1 4 4 8 8 Call TREE-SEARCH(root,4) Now x.key=6 then k<x.key So call TREE-SEARCH(x.left,k) x=root
  • 28. Binary Tree Search Algorithm 6 6 Example: k =4 and x=root.left 2 2 9 9 1 1 4 4 8 8 Call TREE-SEARCH(x,4) Now x.key=2 then k>x.key TREE-SEARCH(x.right,k) x=root.left
  • 29. Binary Tree Search Algorithm 6 6 Example: k =4 and x=root.left.right 2 2 9 9 1 1 4 4 8 8 Call TREE-SEARCH(x,4) Now x.key=4 then k=x.key Search terminates x=root.left.right
  • 30. Binary Tree Search Algorithm 6 6 Example: k =4 and x=root.left.right 2 2 9 9 1 1 4 4 8 8 Now x.key=4 then k=x.key Search terminates and x=root.left.right is the desired node or location x=root.left.right
  • 31. Animation of How Works in a Sorted Data Array
  • 32. BST - Pseudo code if the tree is empty return NULL else if the key value in the node(root) equals the target return the node value else if the key value in the node is greater than the target return the result of searching the left subtree else if the key value in the node is smaller than the target return the result of searching the right subtree
  • 33. Search in a BST: C code Ptnode search(ptnode root, int key) { /* return a pointer to the node that contains key. If there is no such node, return NULL */ if (!root) return NULL; if (key == root->key) return root; if (key < root->key) return search(root->left,key); return search(root->right,key); }
  • 34. Minimum Key or Element  We can always find an element in a binary search tree whose key is minimum by following the left children from the root until we encounter a NIL.  Otherwise if a node x has no left subtree then the value x.key contained in root x is the minimum key or element. The procedure for finding the minimum key:  TREE-MINIMUM(x) 1. while x.left ≠ NIL 2. x = x.left 3. return x
  • 35. Maximum Key or Element  We can always find an element in a binary search tree whose key is maximum by following the right children from the root until we encounter a NIL.  Otherwise if a node x has no right subtree then the value x.key contained in root x is the maximum key or element. The procedure for finding the maximum key:  TREE-MAXIMUM(x) 1. while x.right ≠ NIL 2. x = x.right 3. return x
  • 36. Insert a value into the BST  To insert a new value v into a binary search tree T, we use the procedure TREE-INSERT.  The procedure takes a node z for which z.key=v , z.left=NIL and z.right=NIL.  It modifies T and some of the attributes of z in such a way that it inserts z into an appropriate position in the tree
  • 37. Insert a value into the BST  Suppose v is the value we want to insert and z is the node (New or NIL) we are supposed to find to insert the value v. z.p denotes the parent of z.  X is a pointer that traces a simple path downward the tree and y is the trailing pointer as the parent of x. T.root denote the root of the tree.  Now the intention is to find a new or NIL node that will satisfy the BST property after placing the value v. The procedure first consider x as the root of the tree thus the parent of the root y=NIL.  In steps 3 to 7 the procedure causes the two pointer y and x to move down the tree, going left or right depending on the comparison of z.key with x.key, until x becomes NIL.
  • 38. Insert a value into the BST  Now this NIL occupies the position z, where we wish to place the input item.  At this time we need y the parent of the desired node. This is why at step four we always storing the parent of current node x while moving downward. At the end of step 7 (in step 8) we make this node the parent of z (z.p).  From steps 9 to 11:  Now if tree is empty (y==NIL) then create a root node with the new key(T.root=z)  If the value v is less than the value of the parent(z.key<y.key) then make it as the left-child of the parent(y.left=z)  If the value v is greater than the value of the parent(z.key>y.key) then make it as the right-child of the parent(y.right=z)
  • 39. Insert a value into the BST  TREE-INSERT(T , z) 1. y=NIL 2. x= T.root 3. While x ≠ NIL 4. y=x 5. if z.key<x.key 6. x=x.left 7. else x=x.right 8. z.p=y 9. if y== NIL 10. T.root = z 11.elseif z.key < y.key 12. y.left=z 13.else y.right = z
  • 40. BST Insertion Algorithm 6 6 2 2 9 9 1 1 4 4 8 8 We are supposed to insert an item value 5 and find an appropriate node z for it
  • 41. BST Insertion Algorithm 6 6 x=T.root 2 2 9 9 1 1 4 4 8 8 Y=NIL and x=T.root
  • 42. BST Insertion Algorithm 6 6 x=T.root 2 2 9 9 1 1 4 4 8 8 Now x≠NIL and z.key<x.key That is [5<6]
  • 43. BST Insertion Algorithm 6 6 2 2 9 9 x 1 1 4 4 8 8 Y=T.root and x=T.root.left And z.key>x.key[5>2] y
  • 44. BST Insertion Algorithm 6 6 2 2 9 9 x 1 1 4 4 8 8 Y=T.root.left and x=T.root.left.right And z.key>x.key[5>4] y
  • 45. BST Insertion Algorithm 6 6 2 2 9 9 y 1 1 4 4 8 8 Y=T.root.left.right and x=NIL Then z.p=T.root.left.right
  • 46. BST Insertion Algorithm 6 6 2 2 9 9 y 1 1 4 4 8 8 Y=T.root.left.right [y ≠ NIL] And z.key>y.key [5>4] So y.right=z that is T.root.left.right.right=z z 5
  • 47. Insertion in BST – Pseudo code if tree is empty create a root node with the new key else compare key with the top node if key = node key replace the node with the new value else if key > node key compare key with the right subtree: if subtree is empty create a leaf node else add key in right subtree else key < node key compare key with the left subtree: if the subtree is empty create a leaf node else add key to the left subtree
  • 48. Insertion into a BST: C code void insert (ptnode *node, int key) { ptnode ptr, temp = search(*node, key); if (temp || !(*node)) { ptr = (ptnode) malloc(sizeof(tnode)); if (IS_FULL(ptr)) { fprintf(stderr, “The memory is fulln”); exit(1); } ptr->key = key; ptr->left = ptr->right = NULL; if (*node) if (key<temp->key) temp->left=ptr; else temp->right = ptr; else *node = ptr; } }
  • 49. Delete a value from the BST  Removing a node from a BST is a bit more complex, since we do not want to create any "holes" in the tree. The intention is to remove the specified item from the BST and adjusts the tree  The binary search algorithm is used to locate the target item: starting at the root it probes down the tree till it finds the target or reaches a leaf node (target not in the tree)  If the node has one child then the child is spliced to the parent of the node. If the node has two children then its successor has no left child; copy the successor into the node and delete the successor instead TREE-DELETE (T, z) removes the node pointed to by z from the tree T. IT returns a pointer to the node removed so that the node can be put on a free-node list  The overall strategy for deleting a node or item from a binary search tree can be described through some cases.
  • 50. Delete a value from the BST Experimenting the cases:  if the tree is empty return false  else Attempt to locate the node containing the target using the binary search algorithm: if the target is not found return false else the target is found, then remove its node. Now while removing the node four cases may happen
  • 51. Delete a value from the BST Case 1: if the node has 2 empty subtrees - replace the link in the parent with null Case 2: if the node has a left and a right subtree - replace the node's value with the max value in the left subtree - delete the max node in the left subtree Case 3: if the node has no left child - link the parent of the node to the right (non-empty) subtree Case 4: if the node has no right child - link the parent of the target to the left (non-empty) subtree
  • 52. Delete a value from the BST Case 1: removing a node with 2 EMPTY SUBTREES -replace the link in the parent with null Parent Z Removing 4 5 5 4 4 7 7 9 9 66 88 1100 7 7 5 5 6 6 9 9 88 1100
  • 53. Delete a value from the BST Case 2: removing a node with 2 SUBTREES - replace the node's value with the max value in the left subtree - delete the max node in the left subtree Z Removing 7 5 5 4 4 7 7 9 9 66 88 1100 6 6 5 5 4 4 8 8 9 9 1100
  • 54. Delete a value from the BST Case 3: if the node has no left child - link the parent of the node to the right (non-empty) subtree Z Removing 5 5 5 7 7 9 9 66 88 1100 7 7 8 8 9 9 1100 Parent Parent 6 6
  • 55. Delete a value from the BST Case 4: if the node has no right child - link the parent of the node to the left (non-empty) subtree Z Removing 5 5 5 7 7 9 9 88 1100 7 7 8 8 9 9 1100 Parent Parent 4 4 4 4
  • 56. BST Deletion Algorithm • TREE-DELETE (T, z) 1. if left [z] = NIL .OR. right[z] = NIL 2. then y ← z 3. else y ← TREE-SUCCESSOR (z) 4. if left [y] ≠ NIL 5. then x ← left[y] 6. else x ← right [y] 7. if x ≠ NIL 8. then p[x] ← p[y] 9. if p[y] = NIL 10. then root [T] ← x 11. else if y = left [p[y]] 12. then left [p[y]] ← x 13. else right [p[y]] ← x 14. if y ≠ z 15. then key [z] ← key [y] 16. if y has other field, copy them, too 17. return y
  • 57. Analysis of BST Operations  The complexity of operations search, insert and remove in BST is O(h) , where h is the height.  When the tree is balanced then it is O(log n). The updating operations cause the tree to become unbalanced.  The tree can degenerate to a linear shape and the operations will become O (n)
  • 58. Applications for BST  Binary Search Tree: Used in many search applications where data is constantly entering/leaving, such as the map and set objects in many languages' libraries.  Binary Space Partition: Used in almost every 3D video game to determine what objects need to be rendered.  Binary Tries: Used in almost every high-bandwidth router for storing router-tables.  Heaps: Used in implementing efficient priority-queues. Also used in heap-sort.  Huffman Coding Tree:- used in compression algorithms, such as those used by the .jpeg and .mp3 file-formats.  GGM Trees - Used in cryptographic applications to generate a tree of pseudo-random numbers.  Syntax Tree: Constructed by compilers and (implicitly) calculators to parse expressions.
  • 59. What is a Degenerate BST?  A degenerate binary search tree is one where most or all of the nodes contain only one sub node.  It is unbalanced and, in the worst case, performance degrades to that of a linked list.  If your add node function does not handle rebalancing, then you can easily construct a degenerate tree by feeding it data that is already sorted.
  • 60. Does the order of inserting elements into a tree matter?  Yes, certain orders might produce very unbalanced trees or degenerated trees!  Unbalanced trees are not desirable because search time increases!  Advanced tree structures, such as red-black trees, AVL trees, guarantee balanced trees.
  • 61. Does the order of inserting elements into a tree matter?
  • 62. Better Search Trees Prevent the degeneration of the BST :  A BST can be set up to maintain balance during updating operations (insertions and removals)  Types of ST which maintain the optimal performance in other words balanced trees: – splay trees – AVL trees – 2-4 Trees – Red-Black trees – B-trees
  • 63. References  Introduction to Algorithms by Thomas H. Cormen and others  Binary Search Tree by Penelope Hofsdal  Rada Mihalcea http://www.cs.unt.edu/~rada/CSCE3110
  • 64. MD. Shakhawat Hossain Student of Computer Science & Engineering Dept. University of Rajshahi