Trees Lecture 12 CS2110 – Fall 2017.

Slides:



Advertisements
Similar presentations
Chapter 7. Binary Search Trees
Advertisements

1 abstract containers hierarchical (1 to many) graph (many to many) first ith last sequence/linear (1 to 1) set.
Binary Trees Chapter 6. Linked Lists Suck By now you realize that the title to this slide is true… By now you realize that the title to this slide is.
Binary Trees, Binary Search Trees CMPS 2133 Spring 2008.
Binary Trees, Binary Search Trees COMP171 Fall 2006.
Fall 2007CS 2251 Trees Chapter 8. Fall 2007CS 2252 Chapter Objectives To learn how to use a tree to represent a hierarchical organization of information.
Lec 15 April 9 Topics: l binary Trees l expression trees Binary Search Trees (Chapter 5 of text)
1 abstract containers hierarchical (1 to many) graph (many to many) first ith last sequence/linear (1 to 1) set.
Trees Weiss sec (preview) ch. 18 (sort of).
Binary Trees Chapter 6.
Version TCSS 342, Winter 2006 Lecture Notes Trees Binary Trees Binary Search Trees.
CS 146: Data Structures and Algorithms June 18 Class Meeting Department of Computer Science San Jose State University Summer 2015 Instructor: Ron Mak
Trees Chapter 8. 2 Tree Terminology A tree consists of a collection of elements or nodes, organized hierarchically. The node at the top of a tree is called.
Lecture Objectives  To learn how to use a tree to represent a hierarchical organization of information  To learn how to use recursion to process trees.
Lecture 10 Trees –Definiton of trees –Uses of trees –Operations on a tree.
Tree (new ADT) Terminology:  A tree is a collection of elements (nodes)  Each node may have 0 or more successors (called children)  How many does a.
Binary Trees, Binary Search Trees RIZWAN REHMAN CENTRE FOR COMPUTER STUDIES DIBRUGARH UNIVERSITY.
TREES Lecture 12 CS2110 – Fall Announcements  Prelim #1 is tonight!  Olin 155  A-L  5:30  M-Z  5:30  A4 will be posted today  Mid-semester.
Binary Search Trees (BSTs) 18 February Binary Search Tree (BST) An important special kind of binary tree is the BST Each node stores some information.
Week 10 - Friday.  What did we talk about last time?  Graph representations  Adjacency matrix  Adjacency lists  Depth first search.
Binary Tree. Some Terminologies Short review on binary tree Tree traversals Binary Search Tree (BST)‏ Questions.
1/14/20161 BST Operations Data Structures Ananda Gunawardena.
1 Binary Trees and Binary Search Trees Based on Dale & Co: Object-Oriented Data Structures using C++ (graphics)
Binary Search Trees (BST)
TREES K. Birman’s and G. Bebis’s Slides. Tree Overview 2  Tree: recursive data structure (similar to list)  Each cell may have zero or more successors.
1 Joe Meehean. A A B B D D I I C C E E X X A A B B D D I I C C E E X X  Terminology each circle is a node pointers are edges topmost node is the root.
BINARY TREES Objectives Define trees as data structures Define the terms associated with trees Discuss tree traversal algorithms Discuss a binary.
TREES Lecture 11 CS2110 – Spring Readings and Homework  Textbook, Chapter 23, 24  Homework: A thought problem (draw pictures!)  Suppose you use.
Fundamentals of Algorithms MCS - 2 Lecture # 17. Binary Search Trees.
Binary Trees.
Non Linear Data Structure
Data Structures and Design in Java © Rick Mercer
COMP 53 – Week Fourteen Trees.
Binary Trees.
Binary Trees and Binary Search Trees
Trees Lecture 12 CS2110 – Spring 2017.
Week 6 - Wednesday CS221.
Lecture 22 Binary Search Trees Chapter 10 of textbook
Trees Lecture 12 CS2110 – Fall 2016.
Week 11 - Friday CS221.
abstract containers sequence/linear (1 to 1) hierarchical (1 to many)
ITEC 2620M Introduction to Data Structures
i206: Lecture 13: Recursion, continued Trees
Binary Search Trees Why this is a useful data structure. Terminology
Binary Trees, Binary Search Trees
Chapter 22 : Binary Trees, AVL Trees, and Priority Queues
Data Structures and Database Applications Binary Trees in C#
Map interface Empty() - return true if the map is empty; else return false Size() - return the number of elements in the map Find(key) - if there is an.
Trees Lecture 12 CS2110 – Spring 2018.
CMSC 341 Lecture 10 B-Trees Based on slides from Dr. Katherine Gibson.
Binary Trees.
Find in a linked list? first last 7  4  3  8 NULL
Trees.
Binary Trees.
B- Trees D. Frey with apologies to Tom Anastasio
Trees Lecture 9 CS2110 – Fall 2009.
Trees Lecture 12 CS2110 – Fall 2018.
B- Trees D. Frey with apologies to Tom Anastasio
Binary Trees, Binary Search Trees
Non-Linear Structures
Binary Trees.
Announcements Prelim 1 on Tuesday! A4 will be posted today
CSC 143 Java Trees.
Binary SearchTrees [CLRS] – Chap 12.
Trees.
Binary Trees, Binary Search Trees
Data Structures Using C++ 2E
8.2 Tree Traversals Chapter 8 - Trees.
Trees Lecture 10 CS2110 – Spring 2013.
Tree (new ADT) Terminology: A tree is a collection of elements (nodes)
Presentation transcript:

Trees Lecture 12 CS2110 – Fall 2017

Important Announcements A4 is out now and due two weeks from today. Have fun, and start early!

A picture of a singly linked list: 2 1 Node object pointer int value 4 1 2 Today: trees! Instead of having just one or zero successors, now all our nodes will have *any* number of successors! Still just one (or zero) predecessors.

Tree Overview Tree: data structure with nodes, similar to linked list 5 4 7 8 9 2 A tree 5 4 7 8 9 2 Tree: data structure with nodes, similar to linked list Each node may have zero or more successors (children) Each node has exactly one predecessor (parent) except the root, which has none All nodes are reachable from root Not a tree 5 4 7 8 Also not a tree 5 6 8 List-like tree If you draw a bunch of circles and arrows, and you want to know whether you have drawn a tree…

Binary Trees A binary tree is a particularly important kind of tree where every node as at most two children. In a binary tree, the two children are called the left and right children. 5 4 7 8 9 2 Not a binary tree (a general tree) 5 4 7 8 2 Binary tree

Binary trees were in A1! You have seen a binary tree in A1. A PhD object has one or two advisors. (Confusingly, my advisors are my “children.”) Adrian Sampson Luis Ceze Dan Grossman Josep Torellas Greg Morrisett

Tree Terminology the root of the tree (no parents) right child of M W P J D N H B S right child of M left child of M the leaves of the tree (no children)

Tree Terminology M G W P J D N H B S ancestors of B descendants of W

Tree Terminology M G W P J D N H B S left subtree of M

Tree Terminology A node’s depth is the length of the path to the root. A tree’s (or subtree’s) height is he length of the longest path from the root to a leaf. M G W P J D N H B S Depth 1, height 2. Depth 3, height 0.

Tree Terminology Multiple trees: a forest. G W P J D N H B S

Class for general tree nodes class GTreeNode<T> { private T value; private List<GTreeNode<T>> children; //appropriate constructors, getters, //setters, etc. } 5 4 2 Parent contains a list of its children General tree 7 8 9 7 8 3 1

Class for binary tree node class TreeNode<T> { private T value; private TreeNode<T> left, right; /** Constructor: one-node tree with datum x */ public TreeNode (T d) { datum= d; left= null; right= null;} /** Constr: Tree with root value x, left tree l, right tree r */ public TreeNode (T d, TreeNode<T> l, TreeNode<T> r) { datum= d; left= l; right= r; } Either might be null if the subtree is empty. Binary trees are a special case of general trees, but they are *so common* that we will sometimes just say “tree” when we really mean “binary tree.” more methods: getValue, setValue, getLeft, setLeft, etc.

An Application: Syntax Trees “parsing” * 7 + – 1 9 2 (1 + (9 – 2)) * 7 A Java expression as a string. Trees make the meanings of programs unambiguous! Totally essential for actually running programs and translating them into executable code. A syntax tree is even sometimes called a “parse tree.” An expression as a tree.

A Tree is a Recursive Thing A binary tree is either null or an object consisting of a value, a left binary tree, and a right binary tree.

Looking at trees recursively Binary tree 2 Right subtree (also a binary tree) 9 8 3 5 7 Left subtree, which is a binary tree too

Looking at trees recursively a binary tree

Looking at trees recursively value right subtree left subtree

Looking at trees recursively value

A Recipe for Recursive Functions Base case: If the input is “easy,” just solve the problem directly. Recursive case: Get a smaller part of the input (or several parts). Call the function on the smaller value(s). Use the recursive result to build a solution for the full input.

Recursive Functions on Binary Trees Base case: empty tree (null) or, possibly, a leaf Recursive case: Call the function on each subtree. Use the recursive result to build a solution for the full input.

Binary Search Tree (BST) A binary search tree is a binary tree that is ordered and has no duplicate values. In other words, for every node: All nodes in the left subtree have values that are less than the value in that node, and All values in the right subtree are greater. 2 3 7 9 5 8 < 5 > 5 A BST is the key to making search way faster.

Binary Search Tree (BST) 2 3 7 9 5 8 Compare binary tree to binary search tree: boolean searchBT(n, v): if n==null, return false if n.v == v, return true return searchBST(n.left, v) || searchBST(n.right, v) boolean searchBST(n, v): if n==null, return false if n.v == v, return true if v < n.v return searchBST(n.left, v) else return searchBST(n.right, v) Here's the thing: if the tree is perfectly balanced, so there's the same amount of stuff on either side of any node, then this is *asymptotically* very fast. The height of the tree is log_2 n. And you only have to traverse *at most* the height of the tree! So searching is O(log n) if the tree is balanced. 2 recursive calls 1 recursive call

Building a BST To insert a new item: Pretend to look for the item Put the new node in the place where you fall off the tree

Building a BST january

Building a BST january

Building a BST january february

Building a BST january february

Building a BST january february

Building a BST january march february

Building a BST january february march

Building a BST january april february march

Building a BST january april february march

Building a BST january february march april

Building a BST january february march april

Building a BST january february march april june may august july september december october november

Inserting in Alphabetical Order april

Inserting in Alphabetical Order april

Inserting in Alphabetical Order april august

Inserting in Alphabetical Order april august

Inserting in Alphabetical Order april august december

Inserting in Alphabetical Order april august december february january

Insertion Order Matters A balanced binary tree is one where the two subtrees of any node are about the same size. Searching a binary search tree takes O(h) time, where h is the height of the tree. In a balanced binary search tree, this is O(log n). But if you insert data in sorted order, the tree becomes imbalanced, so searching is O(n).

Tree traversals Other standard kinds of traversals preorder traversal Process root Process left subtree Process right subtree postorder traversal level-order traversal Not recursive: uses a queue (we’ll cover this later) “Walking” over the whole tree is a tree traversal Done often enough that there are standard names Previous example: in-order traversal Process left subtree Process root Process right subtree Note: Can do other processing besides printing

Useful facts about binary trees 5 4 7 8 2 depth 1 Height 2, minimum number of nodes maximum number of nodes Max # of nodes at depth d: 2d If height of tree is h min # of nodes: h + 1 max #of nodes in tree: 20 + … + 2h = 2h+1 – 1 Complete binary tree All levels of tree down to a certain depth are completely filled

Things to think about What if we want to delete data from a BST? A BST works great as long as it’s balanced. There are kinds of trees that can automatically keep themselves balanced as you insert things! jan feb mar apr jun may jul