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Trees II

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Title: Trees II


1
Trees II
  • Kruse and Ryba
  • Ch 10.1,10.2,10.4 and 11.3

2
Menu
  • Taxonomy tree (decision tree)
  • Tree traversal
  • Heaps
  • B-trees
  • Other trees
  • binary space partitioning trees
  • game trees

3
Binary Taxonomy Tree
Are you a mammal?
yes
no
Are you bigger than a cat?
Do you live underwater?
yes
no
yes
no
Are you a primate?
Are you a house pet?
fish
legs?
yes
no
yes
no
yes
no
Talks?
pig
Barks?
mouse
toad
slug
yes
no
yes
no
dog
cat
human
slug
4
Implementation Tree Nodes
Using a typedef statement struct
BinaryTreeNode typedef string Item
Item data BinaryTreeNode left
BinaryTreeNode right
Using a template parameter template ltclass
Itemgt struct BinaryTreeNode Item data
BinaryTreeNode left BinaryTreeNode
right
5
Binary Tree Represented with BinaryTreeNode
Structs
Using a template parameter template ltclass
Itemgt struct BinaryTreeNode Item data
BinaryTreeNode left BinaryTreeNode
right
A
G
L
T
R
O
6
A
G
L
root_ptr
T
R
O
data A
left
right
data L
data G
left
right
left
right
data O
data T
data R
left
right
left
right
left
right
7
Tree Traversal
  • Pre order process parent before children
  • Post order process parent after children
  • In order process left subtree, parent, right
    subtree

Pre order C A T Post order A T C In order A C T
C
T
A
8
In-Order Traversal
  • Process the nodes in the left subtree with a
    recursive call
  • Process the root
  • Process the nodes in the right subtree with a
    recursive call

9
Implementation
template ltclass Itemgt void inorder_print(BinaryTre
eNodeltItemgt node_ptr) if(node_ptr !
NULL) inorder_print(node_ptr-gtleft) cout
ltlt node_ptr-gtdata ltlt endl inorder_print(node_pt
r-gtright)
10
A
G
L
root_ptr
T
R
O
data A
left
right
data L
data G
left
right
left
right
data O
data T
data R
left
right
left
right
left
right
11
A
G
L
root_ptr
T
R
O
data A
left
right
data L
data G
left
right
left
right
data O
data T
data R
left
right
left
right
left
right
12
O
A
G
L
root_ptr
T
R
O
data A
left
right
data L
data G
left
right
left
right
data O
data T
data R
left
right
left
right
left
right
13
O L
A
G
L
root_ptr
T
R
O
data A
left
right
data L
data G
left
right
left
right
data O
data T
data R
left
right
left
right
left
right
14
O L R
A
G
L
root_ptr
T
R
O
data A
left
right
data L
data G
left
right
left
right
data O
data T
data R
left
right
left
right
left
right
15
O L R A
A
G
L
root_ptr
T
R
O
data A
left
right
data L
data G
left
right
left
right
data O
data T
data R
left
right
left
right
left
right
16
O L R A G
A
G
L
root_ptr
T
R
O
data A
left
right
data L
data G
left
right
left
right
data O
data T
data R
left
right
left
right
left
right
17
O L R A G T
A
G
L
root_ptr
T
R
O
data A
left
right
data L
data G
left
right
left
right
data O
data T
data R
left
right
left
right
left
right
18
In-order Traversal of Binary Search Trees
5
453
10
3
600
55
11
6
2
4
9
62
In order traversal 2, 3, 4, 5, 6, 10, 11
In order traversal 9, 55, 62, 453, 600
19
Representing Equations As Binary Trees
Each internal node stores a binary operator Each
leaf stores a value (or variable)


6
-

-
/
2
5
22
22
2
5
22
In order traversal (22 2) (225)
In order traversal ((22/5) 2)6
20
Pre-Order Traversal
  • Process the nodes in the left subtree with a
    recursive call
  • Process the nodes in the right subtree with a
    recursive call
  • Process the root

21
Implementation
template ltclass Itemgt void preorder_print(BinaryTr
eeNodeltItemgt node_ptr) if(node_ptr !
NULL) preorder_print(node_ptr-gtleft) preor
der_print(node_ptr-gtright) cout ltlt
node_ptr-gtdata ltlt endl
22
Post-Order Traversal
  • Process the root
  • Process the nodes in the left subtree with a
    recursive call
  • Process the nodes in the right subtree with a
    recursive call

23
Implementation
template ltclass Itemgt void postorder_print(BinaryT
reeNodeltItemgt node_ptr) if(node_ptr !
NULL) cout ltlt node_ptr-gtdata ltlt
endl postorder_print(node_ptr-gtleft) postord
er_print(node_ptr-gtright)
24
Heaps
  • Complete binary tree.

The next nodes always fill the next level from
left-to-right.
25
Heaps
  • Complete binary tree.

The next nodes always fill the next level from
left-to-right.
26
Heaps
  • Complete binary tree.

27
Heaps
45
  • A heap is a certain kind of complete binary tree.

23
35
4
22
21
27
19
Each node in a heap contains a key that can be
compared to other nodes' keys.
28
Heaps
45
  • A heap is a certain kind of complete binary tree.
  • Can be used to store priority queue

23
35
4
22
21
27
19
The "heap property" requires that each node's key
is gt the keys of its children
29
Adding a Node to a Heap
45
  • Put the new node in the next available spot.
  • Push the new node upward, swapping with its
    parent until the new node reaches an acceptable
    location.

23
35
4
22
21
27
19
42
30
Adding a Node to a Heap
45
  • Put the new node in the next available spot.
  • Push the new node upward, swapping with its
    parent until the new node reaches an acceptable
    location.

23
35
4
22
21
42
19
27
31
Adding a Node to a Heap
45
  • Put the new node in the next available spot.
  • Push the new node upward, swapping with its
    parent until the new node reaches an acceptable
    location.

23
42
4
22
21
35
19
27
32
Adding a Node to a Heap
45
  • The parent has a key that is gt new node, or
  • The node reaches the root.
  • The process of pushing the new node upward
    is called reheapification
    upward.

23
42
4
22
21
35
19
27
33
Removing the Top of a Heap
45
  • Move the last node onto the root.

23
42
4
22
21
35
19
27
34
Removing the Top of a Heap
27
  • Move the last node onto the root.

23
42
4
22
21
35
19
35
Removing the Top of a Heap
27
  • Move the last node onto the root.
  • Push the out-of-place node downward, swapping
    with its larger child until the new node reaches
    an acceptable location.

23
42
4
22
21
35
19
36
Removing the Top of a Heap
42
  • Move the last node onto the root.
  • Push the out-of-place node downward, swapping
    with its larger child until the new node reaches
    an acceptable location.

23
27
4
22
21
35
19
37
Removing the Top of a Heap
42
  • Move the last node onto the root.
  • Push the out-of-place node downward, swapping
    with its larger child until the new node reaches
    an acceptable location.

23
35
4
22
21
27
19
38
Removing the Top of a Heap
42
  • The children all have keys lt the out-of-place
    node, or
  • The node reaches the leaf.
  • The process of pushing the new node downward
    is called reheapification
    downward.

23
35
4
22
21
27
19
39
Implementing a Heap
42
  • We will store the data from the nodes in a
    partially-filled array.

23
35
21
27
An array of data
40
Implementing a Heap
42
  • Data from the root goes in the first
    location of the
    array.

23
35
21
27
42
An array of data
41
Implementing a Heap
42
  • Data from the next row goes in the next two array
    locations.

23
35
21
27
42
35
23
An array of data
42
Implementing a Heap
42
  • Data from the next row goes in the next two array
    locations.

23
35
21
27
42
35
23
27
21
An array of data
43
Implementing a Heap
42
  • Data from the next row goes in the next two array
    locations.

23
35
21
27
42
35
23
27
21
An array of data
We don't care what's in this part of the array.
44
Important Points about the Implementation
42
  • The links between the tree's nodes are not
    actually stored as pointers, or in any other way.
  • The only way we "know" that "the array is a tree"
    is from the way we manipulate the data.

23
35
21
27
42
35
23
27
21
An array of data
45
B-Trees
  • B-tree is a special kind of tree, similar to a
    binary search tree where each node holds entries
    of some type.
  • But a B-tree is not a binary tree
  • nodes can have more than two children
  • Nodes can contain more than just a single entry
  • Rules of B-tree make it easy to search for an
    item.
  • Also ensures that the leaves do not become too
    deep.

46
B-tree Example
93 and 107
subtree number 0
subtree number 1
subtree number 2
Each entry in subtree 0 is less than 93
Each entry in subtree 2 is greater than 107
Each entry in subtree 1 is between 93 and 107
47
B-tree Rules
  • 1. Every node has at least MINIMUM number of
    entries. MINIMUM can be as small as 1, or as big
    as 100s or 1000s.
  • 2. Maximum number of entries in a node is twice
    the value of MINIMUM.
  • 3. The entries in a B-tree are stored in a
    partially-filled array, sorted from the smallest
    entry to the largest entry.
  • 4. The number of subtrees below a node depends on
    how many entries are in the node.

48
B-tree Rule 4
The number of subtrees below a node depends on
how many entries are in the node.
93 and 107
subtree number 0
subtree number 1
subtree number 2
Each entry in subtree 2 is greater than 107
Each entry in subtree 0 is less than 93
Each entry in subtree 1 is between 93 and 107
49
B-tree Rule 5
For any non-leaf node (a) an entry at index i is
greater than all the entries in subtree number i
of the node, and (b) an entry at index i is less
than all the entries in subtree number i1 of the
node.
93 and 107
subtree number 0
subtree number 1
subtree number 2
Each entry in subtree 2 is greater than 107
Each entry in subtree 0 is less than 93
Each entry in subtree 1 is between 93 and 107
50
B-tree Rule 6
Every leaf in a B-tree has the same depth.
6
2 and 4
9
7 and 8
10
1
3
5
51
Operations on B-trees
  • Searching for an item easy
  • Inserting item see text
  • Removing item see text

6
2 and 4
9
7 and 8
10
1
3
5
52
Binary Space Partitioning Tree
2D Example We are given a set of N
points in the plane. Each point has an
associated (x,y) position.
53
Binary Space Partitioning Tree
Problem How to efficiently determine if
a query point (x,y) is contained in the set of
points?
??
54
Possible Solutions
  • Go through N points comparing to see if their
    (x,y) value matches query point (x,y). Drawback
    O(N) complexity.
  • Use some sort of tree structure to organize the
    points, and formulate query in terms of searching
    tree. Assuming uniform distribution of points,
    O(logN) complexity.
  • How to structure tree??? Partition space using
    Binary Space Partitioning (BSP).

55
Building BSP Tree
Approach Recursively split space in
half, in such a way that number of points in each
half is roughly equal.
56
Building BSP Tree
Approach Recursively split space in
half, in such a way that number of points in each
half is roughly equal.
57
Building BSP Tree
Approach Recursively split space in
half, in such a way that number of points in each
half is roughly equal.
58
Building BSP Tree
Approach Recursively split space in
half, in such a way that number of points in each
half is roughly equal.
59
Building BSP Tree
  • Recursively divide set of points using planes
    positioned that split the point set roughly in
    half.
  • Stop recursively dividing when set is empty, or
    set is smaller than threshold M, or maximum tree
    depth is reached.

60
BSP Tree
Result
61
BSP Tree Search
Is there a point in set that matches query point
(x,y)?
62
BSP Tree Search
Is there a point in set that matches query point
(x,y)?
63
BSP Tree Search
Is there a point in set that matches query point
(x,y)?
64
BSP Tree Search
Is there a point in set that matches query point
(x,y)?
65
BSP Tree Search
Compare query point only with those points in
this leaf node.
66
BSP Tree Search Complexity
  • Assume that points are randomly, uniformly
    distributed in space (within some range).
  • We recursively split point set in half at each
    internal node.
  • For analysis, assume that we allow trees of
    unlimited depth, and that each leaf can contain
    only one point.
  • Average case complexity, given N points?

67
Game Trees
  • Consider writing a computer program that plays
    Tic-Tac-Toe against a human...

human makes first move... where should the
computer move??? There are 8 possible choices.
X
68
Game Trees
  • The computer can make 8 possible moves

X
Each possible choice represents one node at that
level in the game tree. Which one should be
chosen??
69
Game Trees
  • The computer can make 8 possible moves

X
Each possible choice represents one node at that
level in the game tree. Which one should be
chosen??
70
Game Tree Look Ahead
  • For each possible move, see what possible moves
    are for opponent.
  • For instance

X
O
Each node represents a possible move that the
opponent could take.
71
Game Tree Look Ahead
  • Proceed recursively, testing all possible moves
    until opponent or computer wins.

X
O
X
Choose a move that leads to the most possible
winning moves!!
72
Game Trees
  • For each turn in the game, build game tree that
    tests possible move scenarios.
  • Choose move that maximizes number of possible
    wins.
  • Parts of the tree are reusable (depending on the
    opponents choice of next move).
  • Problem tree is quite large. Assume we have N9
    possible positions, what is the potential size
    O(f(N)) number of nodes?
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