Algorithms and Data Structures Lecture VIII

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Presentation transcript:

Algorithms and Data Structures Lecture VIII Simonas Šaltenis Nykredit Center for Database Research Aalborg University simas@cs.auc.dk October 7, 2002

This Lecture Red-Black Trees Properties Rotations Insertion Deletion October 7, 2002

Balanced Binary Search Trees Problem: worst-case execution time for dynamic set operations is Q(n) Solution: balanced search trees guarantee small (logarithmic) height! October 7, 2002

Red/Black Trees A red-black tree is a binary search tree with the following properties: Edges (nodes) are colored red or black Incoming edges of leaves are black No two consecutive red edges on any root-leaf path Same number of black edges on any root-leaf path (= black height of the tree) October 7, 2002

More RB-Tree Properties Some measures n – # of internal nodes l – # leaves (= n + 1) h – height bh – black height Property 1: October 7, 2002

More RB-Tree Properties (2) Property 2: Property 3: Operations in the binary-search tree (search, insert, delete, ...) can be accomplished in O(h) time Consequently, the RB-tree is a binary search tree, whose height is bound by 2 log(n+1), the operations run in O(log n) October 7, 2002

Rotation right rotation of B left rotation of A October 7, 2002

Rotation (2) The basic operation for maintaining balanced trees Maintains inorder key ordering After left rotation (right rotation has the opposite effect) Depth(a) decreases by 1 Depth(b) stays the same Depth(g) increases by 1 Rotation takes O(1) time October 7, 2002

Insertion in the RB-Trees Perform a standard search to find the leaf Replace the leaf with an internal node with the new key. The new node has two children (leaves) with black incoming edges Color the incoming edge of the new node red If the parent has an incoming red edge, we have two consecutive red edges! We must re-organize a tree to remove that violation. October 7, 2002

Insertion, Plain and Simple Let n … the new node p … its parent g … its grandparent Case 0: Incoming edge of p is black Insertion algorithm stops here. No further manipulation of the tree necessary! October 7, 2002

Insertion: Case 1 Case 1: Incoming edge of p is red and its sibling (uncle of n) has a red incoming edge a tree rooted at g is balanced enough October 7, 2002

Insertion: Case 1 (2) We call this a promotion Note how the black depth remains unchanged for all of the descendants of g This process will continue upward beyond g if necessary; rename g as n and repeat October 7, 2002

Insertion: Case 3 Case 3: Incoming edge of p is red, its sibling has black incoming edge and n is left child of p We do a “right rotation” No further work on tree is necessary Inorder remains unchanged Tree becomes more balanced No two consecutive red edges! October 7, 2002

Insertion: Cases 2 Case 2: Incoming edge of p is red, its sibling has black incoming edge and n is a right child of p We must perform a “double rotation” – left rotation around p (we end in case 3) followed by right rotation around g October 7, 2002

Insertion: Mirror cases All three cases are handled analogously if p is a right child For example, case 2 and 3 – right-left double rotation October 7, 2002

Insertion: Pseudo Code Case 1 Case 2 Case 3 October 7, 2002

Insertion Summary If two red edges are present, we do either a restructuring (with a simple or double rotation) and stop (cases 2 and 3), or a promotion and continue (case 1) A restructuring takes constant time and is performed at most once. It reorganizes an off-balanced section of the tree Promotions may continue up the tree and are executed O(log n) times (height of the tree) The running time of an insertion is O(log n) October 7, 2002

An Insertion Example Inserting "REDSOX" into an empty tree Now, let us insert "CUBS" October 7, 2002

Example C October 7, 2002

Example U October 7, 2002

Example U (2) Double Rotation October 7, 2002

Example B What now? October 7, 2002

Example B (2) Right Rotation on D October 7, 2002

Example S two red edges and red uncle X- promotion could have placed it on either side October 7, 2002

Example S (2) again two red edges - rotation October 7, 2002

Deletion As with binary search trees, we can always delete a node that has at least one external child If the key to be deleted is stored at a node that has no external children, we move there the key of its inorder predecessor (or successor), and delete that node instead Example: to delete key 7, we move key 5 to node u, and delete node v October 7, 2002

Deletion Algorithm 1. Remove v 2. If v had a red incoming edge, we are done. Else, color u (v’s child) double black. October 7, 2002

Deletion Algorithm (2) How to eliminate double black edges? The intuitive idea is to perform a "color compensation" Find a red edge nearby, and change the pair (red, double black) into (black, black) As for insertion, we have two cases: restructuring, and recoloring Restructuring resolves the problem locally, while recoloring may propagate it two levels up Slightly more complicated than insertion October 7, 2002

Deletion Case 2 If sibling and its children are black, perform a recoloring If parent becomes double black, continue upward October 7, 2002

Deletion: Cases 3 and 4 If sibling is black and one of its children is red, perform a restructuring October 7, 2002

Deletion Case 1 If sibling is red, perform a rotation to get into one of cases 2, 3, and 4 If the next case is 2 (recoloring), there is no propagation upward (parent is now red) October 7, 2002

A Deletion Example Delete 9 October 7, 2002

A Deletion Example (2) Case 2 (sibling is black with black children) – recoloring October 7, 2002

A Deletion Example (3) Delete 8: no double black October 7, 2002

A Deletion Example (4) Delete 7: restructuring October 7, 2002

How long does it take? Deletion in a RB-tree takes O(log n) Maximum three rotations and O(log n) recolorings October 7, 2002

Other balanced trees Red-Black trees are related to 2-3-4 trees (non-binary trees) AVL-trees have simpler algorithms, but may perform a lot of rotations October 7, 2002

Next Week External storage search trees: B-Trees October 7, 2002