Data Structures and Algorithm Analysis in C++
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Chapter 1 Programming: A General Overview 1
1.1 What’s This Book About? 1
1.2 Mathematics Review 2
1.2.1 Exponents 3
1.2.2 Logarithms 3
1.2.3 Series 4
1.2.4 Modular Arithmetic 5
1.2.5 The P Word 6
1.3 A Brief Introduction to Recursion 8
1.4 C++ Classes 12
1.4.1 Basic class Syntax 12
1.4.2 Extra Constructor Syntax and Accessors 13
1.4.3 Separation of Interface and Implementation 16
1.4.4 vector and string 19
1.5 C++ Details 21
1.5.1 Pointers 21
1.5.2 Lvalues, Rvalues, and References 23
1.5.3 Parameter Passing 25
1.5.4 Return Passing 27
1.5.5 std::swap and std::move 29
1.5.6 The Big-Five: Destructor, Copy Constructor, Move Constructor, Copy Assignment operator=, Move Assignment operator= 30
1.5.7 C-style Arrays and Strings 35
1.6 Templates 36
1.6.1 Function Templates 37
1.6.2 Class Templates 38
1.6.3 Object, Comparable, and an Example 39
1.6.4 Function Objects 41
1.6.5 Separate Compilation of Class Templates 44
1.7 Using Matrices 44
1.7.1 The Data Members, Constructor, and Basic Accessors 44
1.7.2 operator[] 45
1.7.3 Big-Five 46
Summary 46
Exercises 46
References 48
Chapter 2 Algorithm Analysis 51
2.1 Mathematical Background 51
2.2 Model 54
2.3 What to Analyze 54
2.4 Running-Time Calculations 57
2.4.1 A Simple Example 58
2.4.2 General Rules 58
2.4.3 Solutions for the Maximum Subsequence Sum Problem 60
2.4.4 Logarithms in the Running Time 66
2.4.5 Limitations of Worst Case Analysis 70
Summary 70
Exercises 71
References 76
Chapter 3 Lists, Stacks, and Queues 77
3.1 Abstract Data Types (ADTs) 77
3.2 The List ADT 78
3.2.1 Simple Array Implementation of Lists 78
3.2.2 Simple Linked Lists 79
3.3 vector and list in the STL 80
3.3.1 Iterators 82
3.3.2 Example: Using erase on a List 83
3.3.3 const_iterators 84
3.4 Implementation of vector 86
3.5 Implementation of list 91
3.6 The Stack ADT 103
3.6.1 Stack Model 103
3.6.2 Implementation of Stacks 104
3.6.3 Applications 104
3.7 The Queue ADT 112
3.7.1 Queue Model 113
3.7.2 Array Implementation of Queues 113
3.7.3 Applications of Queues 115
Summary 116
Exercises 116
Chapter 4 Trees 121
4.1 Preliminaries 121
4.1.1 Implementation of Trees 122
4.1.2 Tree Traversals with an Application 123
4.2 Binary Trees 126
4.2.1 Implementation 128
4.2.2 An Example: Expression Trees 128
4.3 The Search Tree ADT–Binary Search Trees 132
4.3.1 contains 134
4.3.2 findMin and findMax 135
4.3.3 insert 136
4.3.4 remove 139
4.3.5 Destructor and Copy Constructor 141
4.3.6 Average-Case Analysis 141
4.4 AVL Trees 144
4.4.1 Single Rotation 147
4.4.2 Double Rotation 149
4.5 Splay Trees 158
4.5.1 A Simple Idea (That Does Not Work) 158
4.5.2 Splaying 160
4.6 Tree Traversals (Revisited) 166
4.7 B-Trees 168
4.8 Sets and Maps in the Standard Library 173
4.8.1 Sets 173
4.8.2 Maps 174
4.8.3 Implementation of set and map 175
4.8.4 An Example That Uses Several Maps 176
Summary 181
Exercises 182
References 189
Chapter 5 Hashing 193
5.1 General Idea 193
5.2 Hash Function 194
5.3 Separate Chaining 196
5.4 Hash Tables without Linked Lists 201
5.4.1 Linear Probing 201
5.4.2 Quadratic Probing 202
5.4.3 Double Hashing 207
5.5 Rehashing 208
5.6 Hash Tables in the Standard Library 210
5.7 Hash Tables with Worst-Case O(1) Access 212
5.7.1 Perfect Hashing 213
5.7.2 Cuckoo Hashing 215
5.7.3 Hopscotch Hashing 224
5.8 Universal Hashing 230
5.9 Extendible Hashing 233
Summary 236
Exercises 238
References 242
Chapter 6 Priority Queues (Heaps) 245
6.1 Model 245
6.2 Simple Implementations 246
6.3 Binary Heap 247
6.3.1 Structure Property 247
6.3.2 Heap-Order Property 248
6.3.3 Basic Heap Operations 249
6.3.4 Other Heap Operations 252
6.4 Applications of Priority Queues 257
6.4.1 The Selection Problem 258
6.4.2 Event Simulation 259
6.5 d-Heaps 260
6.6 Leftist Heaps 261
6.6.1 Leftist Heap Property 261
6.6.2 Leftist Heap Operations 262
6.7 Skew Heaps 269
6.8 Binomial Queues 271
6.8.1 Binomial Queue Structure 271
6.8.2 Binomial Queue Operations 271
6.8.3 Implementation of Binomial Queues 276
6.9 Priority Queues in the Standard Library 283
Summary 283
Exercises 283
References 288
Chapter 7 Sorting 291
7.1 Preliminaries 291
7.2 Insertion Sort 292
7.2.1 The Algorithm 292
7.2.2 STL Implementation of Insertion Sort 293
7.2.3 Analysis of Insertion Sort 294
7.3 A Lower Bound for Simple Sorting Algorithms 295
7.4 Shellsort 296
7.4.1 Worst-Case Analysis of Shellsort 297
7.5 Heapsort 300
7.5.1 Analysis of Heapsort 301
7.6 Mergesort 304
7.6.1 Analysis of Mergesort 306
7.7 Quicksort 309
7.7.1 Picking the Pivot 311
7.7.2 Partitioning Strategy 313
7.7.3 Small Arrays 315
7.7.4 Actual Quicksort Routines 315
7.7.5 Analysis of Quicksort 318
7.7.6 A Linear-Expected-Time Algorithm for Selection 321
7.8 A General Lower Bound for Sorting 323
7.8.1 Decision Trees 323
7.9 Decision-Tree Lower Bounds for Selection Problems 325
7.10 Adversary Lower Bounds 328
7.11 Linear-Time Sorts: Bucket Sort and Radix Sort 331
7.12 External Sorting 336
7.12.1 Why We Need New Algorithms 336
7.12.2 Model for External Sorting 336
7.12.3 The Simple Algorithm 337
7.12.4 Multiway Merge 338
7.12.5 Polyphase Merge 339
7.12.6 Replacement Selection 340
Summary 341
Exercises 341
References 347
Chapter 8 The Disjoint Sets Class 351
8.1 Equivalence Relations 351
8.2 The Dynamic Equivalence Problem 352
8.3 Basic Data Structure 353
8.4 Smart Union Algorithms 357
8.5 Path Compression 360
8.6 Worst Case for Union-by-Rank and Path Compression 361
8.6.1 Slowly Growing Functions 362
8.6.2 An Analysis by Recursive Decomposition 362
8.6.3 An O( M log *N ) Bound 369
8.6.4 An O( M α(M, N) ) Bound 370
8.7 An Application 372
Summary 374
Exercises 375
References 376
Chapter 9 Graph Algorithms 379
9.1 Definitions 379
9.1.1 Representation of Graphs 380
9.2 Topological Sort 382
9.3 Shortest-Path Algorithms 386
9.3.1 Unweighted Shortest Paths 387
9.3.2 Dijkstra’s Algorithm 391
9.3.3 Graphs with Negative Edge Costs 400
9.3.4 Acyclic Graphs 400
9.3.5 All-Pairs Shortest Path 404
9.3.6 Shortest Path Example 404
9.4 Network Flow Problems 406
9.4.1 A Simple Maximum-Flow Algorithm 408
9.5 Minimum Spanning Tree 413
9.5.1 Prim’s Algorithm 414
9.5.2 Kruskal’s Algorithm 417
9.6 Applications of Depth-First Search 419
9.6.1 Undirected Graphs 420
9.6.2 Biconnectivity 421
9.6.3 Euler Circuits 425
9.6.4 Directed Graphs 429
9.6.5 Finding Strong Components 431
9.7 Introduction to NP-Completeness 432
9.7.1 Easy vs. Hard 433
9.7.2 The Class NP 434
9.7.3 NP-Complete Problems 434
Summary 437
Exercises 437
References 445
Chapter 10 Algorithm Design Techniques 449
10.1 Greedy Algorithms 449
10.1.1 A Simple Scheduling Problem 450
10.1.2 Huffman Codes 453
10.1.3 Approximate Bin Packing 459
10.2 Divide and Conquer 467
10.2.1 Running Time of Divide-and-Conquer Algorithms 468
10.2.2 Closest-Points Problem 470
10.2.3 The Selection Problem 475
10.2.4 Theoretical Improvements for Arithmetic Problems 478
10.3 Dynamic Programming 482
10.3.1 Using a Table Instead of Recursion 483
10.3.2 Ordering Matrix Multiplications 485
10.3.3 Optimal Binary Search Tree 487
10.3.4 All-Pairs Shortest Path 491
10.4 Randomized Algorithms 494
10.4.1 Random-Number Generators 495
10.4.2 Skip Lists 500
10.4.3 Primality Testing 503
10.5 Backtracking Algorithms 506
10.5.1 The Turnpike Reconstruction Problem 506
10.5.2 Games 511
Summary 518
Exercises 518
References 527
Chapter 11 Amortized Analysis 533
11.1 An Unrelated Puzzle 534
11.2 Binomial Queues 534
11.3 Skew Heaps 539
11.4 Fibonacci Heaps 541
11.4.1 Cutting Nodes in Leftist Heaps 542
11.4.2 Lazy Merging for Binomial Queues 544
11.4.3 The Fibonacci Heap Operations 548
11.4.4 Proof of the Time Bound 549
11.5 Splay Trees 551
Summary 555
Exercises 556
References 557
Chapter 12 Advanced Data Structures and Implementation 559
12.1 Top-Down Splay Trees 559
12.2 Red-Black Trees 566
12.2.1 Bottom-Up Insertion 567
12.2.2 Top-Down Red-Black Trees 568
12.2.3 Top-Down Deletion 570
12.3 Treaps 576
12.4 Suffix Arrays and Suffix Trees 579
12.4.1 Suffix Arrays 580
12.4.2 Suffix Trees 583
12.4.3 Linear-Time Construction of Suffix Arrays and Suffix Trees 586
12.5 k-d Trees 596
12.6 Pairing Heaps 602
Summary 606
Exercises 608
References 612
Appendix A Separate Compilation of Class Templates 615
A.1 Everything in the Header 616
A.2 Explicit Instantiation 616
Index 619
Data Structures and Algorithm Analysis in C++ is an advanced algorithms book that bridges the gap between traditional CS2 and Algorithms Analysis courses.
As the speed and power of computers increases, so does the need for effective programming and algorithm analysis. By approaching these skills in tandem, Mark Allen Weiss teaches readers to develop well-constructed, maximally efficient programs using the C++ programming language.
This book explains topics from binary heaps to sorting to NP-completeness, and dedicates a full chapter to amortized analysis and advanced data structures and their implementation. Figures and examples illustrating successive stages of algorithms contribute to Weiss’ careful, rigorous and in-depth analysis of each type of algorithm.
Data Structures and Algorithm Analysis in C++ is an advanced algorithms book that bridges the gap between traditional CS2 and Algorithms Analysis courses.
As the speed and power of computers increases, so does the need for effective programming and algorithm analysis. By approaching these skills in tandem, Mark Allen Weiss teaches readers to develop well-constructed, maximally efficient programs using the C++ programming language.
This book explains topics from binary heaps to sorting to NP-completeness, and dedicates a full chapter to amortized analysis and advanced data structures and their implementation. Figures and examples illustrating successive stages of algorithms contribute to Weiss’ careful, rigorous and in-depth analysis of each type of algorithm.
The fourth edition incorporates numerous bug fixes, and many parts of the book have undergone revision to increase the clarity of presentation. In addition,
- Chapter 4 includes implementation of the AVL tree deletion algorithm–a topic often requested by readers.
- Chapter 5 has been extensively revised and enlarged and now contains material on two newer algorithms: cuckoo hashing and hopscotch hashing. Additionally, a new section on universal hashing has been added. Also new is a brief discussion of the unordered_set and unordered_map class templates introduced in C++11.
- Chapter 6 is mostly unchanged; however, the implementation of the binary heap makes use of move operations that were introduced in C++11.
- Chapter 7 now contains material on radix sort, and a new section on lower-bound proofs has been added. Sorting code makes use of move operations that were introduced in C++11.
- Chapter 8 uses the new union/find analysis by Seidel and Sharir and shows the O( M α(M,N) ) bound instead of the weaker O( Mlog∗ N ) bound in prior editions.
- Chapter 12 adds material on suffix trees and suffix arrays, including the linear-time suffix array construction algorithm by Karkkainen and Sanders (with implementation). The sections covering deterministic skip lists and AA-trees have been removed.
- Throughout the text, the code has been updated to use C++11. Notably, this means use of the new C++11 features, including the auto keyword, the range for loop, move construction and assignment, and uniform initialization.
- This text is designed to teach students good programming and algorithm analysis skills simultaneously so that they can develop intricate programs with the maximum amount of efficiency.
- By analyzing an algorithm before it is actually coded, students can decide if a particular solution will be feasible and see how careful implementations can reduce the time constraint for large amounts of data. No algorithm or data structure is presented without an explanation of its running time.
- This book is suitable for either an advanced data structures (CS7) course or a first-year graduate course in algorithm analysis. As introductory sequences expand from two to three courses, this book is ideal at the end of the third course, bridging the way to the Algorithms course.
- Discussion of algorithm and design techniques covers greedy algorithms, divide and conquer algorithms, dynamic programming, randomized algorithms, and backtracking.
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Covers topics and data structures such as Fibonacci heaps, skew heaps, binomial queue, skip lists and splay trees.
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A full chapter on amortized analysis examines the advanced data structures presented earlier in the book.
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Chapter on advanced data structures and their implementation covers red black trees, top down splay trees, k-d trees, pairing heaps, and more.
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End-of-chapter exercises, ranked by difficulty, reinforce the material from the chapter while providing readers an opportunity to put those concepts into practice.
Mark Allen Weiss is Professor and Associate Director for the School of Computing and Information Sciences at Florida International University. He is also currently serving as both Director of Undergraduate Studies and Director of Graduate Studies. He received his Bachelor’s Degree in Electrical Engineering from the Cooper Union in 1983, and his Ph.D. in Computer Science from Princeton University in 1987, working under Bob Sedgewick. He has been at FIU since 1987 and was promoted to Professor in 1996. His interests include data structures, algorithms, and education. He is most well-known for his highly-acclaimed Data Structures textbooks, which have been used for a generation by roughly a million students.
Professor Weiss is the author of numerous publications in top-rated journals and was recipient of the University’s Excellence in Research Award in 1994. In 1996 at FIU he was the first in the world to teach Data Structures using the Java programming language, which is now the de facto standard. From 1997-2004 he served as a member of the Advanced Placement Computer Science Development Committee, chairing the committee from 2000-2004. The committee designed the curriculum and wrote the AP exams that were taken by 20,000 high school students annually.
In addition to his Research Award in 1994, Professor Weiss is also the recipient of the University’s Excellence in Teaching Award in 1999 and the School of Computing and Information Science Excellence in Teaching Award (2005) and Excellence in Service Award (2007).
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Dimensions | 1.70 × 7.90 × 9.40 in |
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Subjects | computer science, COM051300, higher education, Engineering and Computer Science, Data Structures |