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Trees Lecture 12 CS2110 – Spring 2018
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Important Announcements
A4 is out now and due two weeks from today. Have fun, and start early! There are slots available for lunch with the professors: link from Piazza Recitation 6: Iterator and Iterable Watch the tutorials! Quiz due on Monday (yes, that's the day before the prelim, sorry)
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Data Structures There are different ways of storing data, called data structures Each data structure has operations that it is good at and operations that it is bad at For any application, you want to choose a data structure that is good at the things you do often
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Example Data Structures
add(val x) lookup(int i) Array Linked List 𝑂(𝑛) 𝑂(1) 2 1 3 𝑂(1) 𝑂(𝑛) 2 1 3
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The Problem of Search Search is the problem of finding an element in a data structure when you don't know where it is stored example applications: DB indexing, process scheduling (CFS Linux), set/map/dictionary (C++)
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Example Data Structures
add(val x) lookup(int i) Array Linked List search(val x) 𝑂(𝑛) 𝑂(1) 𝑂(𝑛) 2 1 3 𝑂(1) 𝑂(𝑛) 𝑂(𝑛) 2 1 3
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Tree Singly linked list: Node object pointer int value Today: trees! 2
1 Node object pointer int value 4 1 2 Today: trees!
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Tree Overview Tree: data structure with nodes, similar to linked list
5 4 7 8 9 2 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 A tree Not a tree 5 4 7 8 5 6 8 If you draw a bunch of circles and arrows, and you want to know whether you have drawn a tree… Not a tree A tree
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Tree Terminology the root of the tree (no parents) child of M
W P J D N H B S child of M child of M the leaves of the tree (no children)
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Tree Terminology M G W P J D N H B S ancestors of B descendants of W
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Tree Terminology M G W P J D N H B S subtree of M
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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.
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Tree Terminology Multiple trees: a forest. G W P J D N H B S
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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
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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
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Binary trees were in A1! You have seen a binary tree in A1.
A PhD object has one or two advisors. (Confusingly, the advisors are the “children.”) David Gries Friedrich Bauer Georg Aumann Fritz Bopp Fritz Sauter Erwin Fues Heinrich Tietze Constantin Carathodory
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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 v) { value= v; left= null; right= null;} /** Constr: Tree with root value x, left tree l, right tree r */ public TreeNode (T v, TreeNode<T> l, TreeNode<T> r) { value= v; 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.
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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.
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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
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Looking at trees recursively
a binary tree
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Looking at trees recursively
value right subtree left subtree
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Looking at trees recursively
value
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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.
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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.
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Comparing Data Structures
add(val x) lookup(int i) Array Linked List search(val x) 𝑂(𝑛) 𝑂(1) 𝑂(𝑛) 2 1 3 𝑂(1) 𝑂(𝑛) 𝑂(𝑛) Binary Tree 2 1 3 2 1 3 𝑂(1) 𝑂(𝑛) 𝑂(𝑛)
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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.
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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
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Building a BST january
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Building a BST january
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Building a BST january february
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Building a BST january february
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Building a BST january february
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Building a BST january march february
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Building a BST january february march
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Building a BST january april february march
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Building a BST january april february march
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Building a BST january february march april
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Building a BST january february march april
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Building a BST january february march april june may august july
september december october november
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Printing contents of BST
/** Print BST t in alpha order */ private static void print(TreeNode<T> t) { if (t== null) return; print(t.left); System.out.print(t.value); print(t.right); } Because of ordering rules for a BST, it’s easy to print the items in alphabetical order Recursively print left subtree Print the node Recursively print right subtree show code
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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
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Comparing Data Structures
add(val x) lookup(int i) Array Linked List search(val x) 𝑂(𝑛) 𝑂(1) 𝑂(𝑛) 2 1 3 𝑂(1) 𝑂(𝑛) 𝑂(𝑛) Binary Tree BST 2 1 3 1 2 3 𝑂(1) 𝑂(𝑛) 𝑂(𝑛) 2 1 3 𝑂(𝑑𝑒𝑝𝑡ℎ) 𝑂(𝑑𝑒𝑝𝑡ℎ) 𝑂(𝑑𝑒𝑝𝑡ℎ)
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Inserting in Alphabetical Order
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Inserting in Alphabetical Order
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Inserting in Alphabetical Order
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Inserting in Alphabetical Order
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Inserting in Alphabetical Order
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Inserting in Alphabetical Order
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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).
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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
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