Algorithms (4th Edition) and over one million other books are available for Amazon Kindle. Learn more

Vous voulez voir cette page en français ? Cliquez ici.


or
Sign in to turn on 1-Click ordering.
or
Amazon Prime Free Trial required. Sign up when you check out. Learn More
More Buying Choices
Have one to sell? Sell yours here
Start reading Algorithms (4th Edition) on your Kindle in under a minute.

Don't have a Kindle? Get your Kindle here, or download a FREE Kindle Reading App.

Algorithms (4th Edition) [Hardcover]

Robert Sedgewick , Kevin Wayne

List Price: CDN$ 83.99
Price: CDN$ 68.04 & this item ships for FREE with Super Saver Shipping. Details
You Save: CDN$ 15.95 (19%)
o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o
Only 4 left in stock (more on the way).
Ships from and sold by Amazon.ca. Gift-wrap available.
Want it delivered Friday, May 24? Choose One-Day Shipping at checkout.

Formats

Amazon Price New from Used from
Kindle Edition CDN $35.19  
Hardcover CDN $68.04  
Paperback --  

Book Description

Mar 9 2011 032157351X 978-0321573513 4

Essential Information about Algorithms and Data Structures

 

A Classic Reference

The latest version of Sedgewick’s best-selling series, reflecting an indispensable body of knowledge developed over the past several decades.

 

Broad Coverage

Full treatment of data structures and algorithms for sorting, searching, graph processing, and string processing, including fifty algorithms every programmer should know. See algs4.cs.princeton.edu/code.

 

Completely Revised Code

New Java implementations written in an accessible modular programming style, where all of the code is exposed to the reader and ready to use.

 

Engages with Applications

Algorithms are studied in the context of important scientific, engineering, and commercial applications. Clients and algorithms are expressed in real code, not the pseudo-code found in many other books.

 

Intellectually Stimulating

Engages reader interest with clear, concise text, detailed examples with visuals, carefully crafted code, historical and scientific context, and exercises at all levels.

 

A Scientific Approach

Develops precise statements about performance, supported by appropriate mathematical models and empirical studies validating those models.

 

Integrated with the Web

Visit algs4.cs.princeton.edu for a freely accessible, comprehensive Web site, including text digests, program code, test data, programming projects, exercises, lecture slides, and other resources.

 

Contents

Chapter 1: Fundamentals

Programming Model

Data Abstraction

Bags, Stacks, and Queues

Analysis of Algorithms

Case Study: Union-Find

 

Chapter 2: Sorting

Elementary Sorts

Mergesort

Quicksort

Priority Queues

Applications

 

Chapter 3: Searching

Symbol Tables

Binary Search Trees

Balanced Search Trees

Hash Tables

Applications

 

Chapter 4: Graphs

Undirected Graphs

Directed Graphs

Minimum Spanning Trees

Shortest Paths

 

Chapter 5: Strings

String Sorts

Tries

Substring Search

Regular Expressions

Data Compression

 

Chapter 6: Context


Frequently Bought Together

Algorithms (4th Edition) + Cracking the Coding Interview: 150 Programming Questions and Solutions + Introduction to Algorithms
Price For All Three: CDN$ 182.47

Show availability and shipping details

  • In Stock.
    Ships from and sold by Amazon.ca.
    This item ships for FREE with Super Saver Shipping. Details

  • Cracking the Coding Interview: 150 Programming Questions and Solutions CDN$ 26.30

    In Stock.
    Ships from and sold by Amazon.ca.
    This item ships for FREE with Super Saver Shipping. Details

  • Introduction to Algorithms CDN$ 88.13

    In Stock.
    Ships from and sold by Amazon.ca.
    This item ships for FREE with Super Saver Shipping. Details


Customers Who Bought This Item Also Bought


Product Details


Product Description

About the Author

Robert Sedgewick has been a Professor of Computer Science at Princeton University since 1985, where he was the founding Chairman of the Department of Computer Science. He has held visiting research positions at Xerox PARC, Institute for Defense Analyses, and INRIA, and is member of the board of directors of Adobe Systems. Professor Sedgewick’s research interests include analytic combinatorics, design and analysis of data structures and algorithms, and program visualization. His landmark book, Algorithms, now in its fourth edition, has appeared in numerous versions and languages over the past thirty years. In addition, with Kevin Wayne, he is the coauthor of the highly acclaimed textbook, Introduction to Programming in Java: An Interdisciplinary Approach (Addison-Wesley, 2008).

 

Kevin Wayne is the Phillip Y. Goldman Senior Lecturer in Computer Science at Princeton University, where he has been teaching since 1998. He received a Ph.D. in operations research and industrial engineering from Cornell University. His research interests include the design, analysis, and implementation of algorithms, especially for graphs and discrete optimization. With Robert Sedgewick, he is the coauthor of the highly acclaimed textbook, Introduction to Programming in Java: An Interdisciplinary Approach (Addison-Wesley, 2008).


Inside This Book (Learn More)
Browse Sample Pages
Front Cover | Copyright | Table of Contents | Excerpt | Index
Search inside this book:

What Other Items Do Customers Buy After Viewing This Item?


Customer Reviews

There are no customer reviews yet on Amazon.ca
5 star
4 star
3 star
2 star
1 star
Most Helpful Customer Reviews on Amazon.com (beta)
Amazon.com: 4.4 out of 5 stars  38 reviews
186 of 195 people found the following review helpful
5.0 out of 5 stars Best algorithms textbook by far May 21 2011
By Kevin P. Murphy - Published on Amazon.com
Format:Hardcover
"Algorithms" (4th edn) by Robert Sedgewick and Kevin Wayne (published
by Addison-Wesley in March 2011) is one of the best computer science
books I have ever read. It should be required reading for all CS
students and all programmers - it aims to cover the "50 algorithms
every programmer should know". Below I discuss some of the main
reasons why I think the book is so good.

Unlike its main rival, "An introduction to algorithms" by Cormen,
Leiserson, Rivest and Stein (CLRS), "Algorithms" contains actual
source code (written in a subset of Java). The importance of this
cannot be overstated: it means students can actually use the
algorithms to solve real problems. This enables a wealth of
interesting and motivating applications --- from web search to
genomics --- which are sprinkled throughout the book. (Source code and
data are available on the book's website.)

A natural worry with real code is that it will obscure the basic
ideas. However, by careful useful of abstract data types (classes
such as queues, bags, hash tables, trees, DAGs, etc), the authors have
done a masterful job at creating extremely concise and readable
implementations.

Using real code also forces one to address important implementation
details that are easy to overlook. For example, it is well known that
mergesort requires auxiliary memory. In the CLRS pseudocode, they
allocate temporary storage space inside their merge routine. In
practice it is much more efficient to allocate temporary storage space
once, and then pass this in as a pointer to the merge function (or let
it be a private member of the mergesort class). Where else can you
learn such important tricks?

In addition to presenting the code, there are of course accompanying
English explanations of the methods, which are very clear. One unique
thing about "Algorithms" is that there are also many detailed worked
examples, illustrating the behavior of the algorithms while running on
actual data (something that is hard to do unless you actually
implement all the algorithms!)

Another strength is that the book is that exemplifies good software
engineering practice: write the API first, devise unit tests and/or
implement applications ("clients") that use the data structure or
algorithm, and only then worry about how to implement the
API. Furthermore, multiple implementations of the API are usually
discussed, with different tradeoffs between simplicity, speed and
memory use.

For data structures, it is obviously natural to use classes, but they
also adopt this approach for many algorithms, esp. graph processing
ones. This allows the algo to do pre-processing and to store internal
state, and then to provide a service to the caller. This is more
general than the standard stateless functional view of algorithms.

Each section of the book has a large number of exercises, classified
into "simple", "creative" and "experimental". Solutions to some
exercises are available online.

An unusual feature of the book is that it contains a lot of empirical
algorithmics, in addition to theory. That is, it shows actual running
times of different implementations on problems of different sizes, and
uses this to supplement traditional theoretical analysis.

A small bonus relative to CLRS is that the book is slightly shorter
(~ 1000 pages instead of 1300). In addition it is available in Kindle
format, which means one just has to carry around an ipad instead of a
back-breaking tome. (The formatting of the Kindle edition is not
perfect, however.)

Not surprisingly, the content of "Algorithms" overlaps a lot with
CLRS. This is not obvious from the table of contents, which only
gives a high level view of the book. I have therefore created a more
detailed list of topics (see below).

The overall ordering and flow of the book is great: ideas (and code)
that are introduced early on get re-used in several places later in
the book (e.g., heaps -> priority queues -> Prim's algo for min
spanning trees). The topics also become more advanced. Consequently,
the book is best read sequentially. It is worth reading the whole thing.

Kevin Murphy
Prof. of Computer Science
University of British Columbia

Below I give a detailed summary of the topics in the book,
since this is not apparent from the table of contents.

1. Fundamentals

1.1 Basic programming model
- Intro to Java
- APIs and libraries
- Binary search (recursion)

1.2 Data abstraction
- Basics of OOP
- Avoiding 'wide' interfaces

1.3 Bags, queues and stacks
- Generics (known as templates in C++)
- Iterators
- Dijkstra's 2 stack algo for evaluating arithmetic expressions
- Resizing arrays
- Linked lists, pointers

1.4 Analysis of algorithms
- empirical algorithmics
- big O notation ("linearithmic" as a term for O(N log N))
- Randomized algorithms
- Memory usage

1.5 Case study: Union-find
- Application: Dynamic connectivity (are p,q in same set?)
- 3 implementations, culminating in the classic algorithm

2. Sorting

2.1 Elementary sorts
- Selection sort
- insertion sort
- shell sort

2.2 Mergesort
- Top-down (recursive)
- Proof that running time is N log N
- Bottom-up
- proof that lower bound for sorting requires N log N compares

2.3 Quicksort
- implementation
- analysis
- 3 way partitioning to speedup case of equal keys
- lower bound for sorting is N*entropy of key distrib.

2.4 Priority queues
- heaps
- priority queue,
- top N items from a list using PQ
- multiway merge of N sorted lists using indexed PQ
- heapsort
- comparison of sorting algos (speed, stability, in place, extra space)
- order statistics/ median finding in O(N) time

3. Searching

3.1 Symbol tables (aka associative arrays)
- ST vs ordered ST (where keys can be compared, so can get min and max)
- count word frequencies in a large document
- sequential search through unordered linked list
- binary search through ordered array

3.2 Binary search trees
- BST property (parent is bigger than left child, smaller than right)
- get and put implementation and analysis O(log N) time
- find min, delete min, delete any node
- inorder traversal

3.3 Balanced search trees
- 2-3 trees and red-black trees

3.4 Hash tables
- hash functions (eg modular hashing with Horner's rule)
- separate chaining
- linear probing

3.5 Applications
- Deduplication
- Dictionary lookup
- inverted index
- file index
- sparse matrix vector multipication

4. Graphs

4.1 Undirected graphs
- Adjacency list representation
- Depth first search
- Breadth first search
- single source shortest paths using bfs
- connected components usign dfs
- is G acyclic using dfs
- is G bipartite using dfs
- Kevin Bacon game (degrees of separation)

4.2 Directed graphs
- Multi-source reachability
- Application to mark-sweep garbage collection
- Cycle detection using dfs
- topological sort (reverse of post order)
- Kosaraju's algo for strongly connected components
- Transitive closure (all pairs reachability)

4.3 Min spanning trees of undirected weighted graphs
- Prim's algo
- Kruskal's algo

4.4 Shortest paths in weighted digraphs
- Dijkstra's algo
- Shortest paths in weighted (possibly -ve) DAGs
- Critical path method for scheduling
- Shortest paths in weighted cyclic digraphs (Bellman-Ford and -ve cycle detection )
- Application to arbitrage

5. Strings

5.1 String sorts
- key indexed counting (radix sort)
- least significant digit (LSD) sorting
- most significant digit (MSD) sorting for variable length strings
- 3-way string quicksort for repeated prefixes.

5.2 Tries
- R-way trie
- longestPrefixOf
- Ternary search tries (BST representation of R-way array)

5.3 Substring search
- brute force method
- KMP method
- Boyer-Moore method
- Rabin-Karp fingerprint

5.4 Regular expressions
- Syntax of regexp
- Check if string in language using non-deterministic finite automaton

5.5 Data compression
- Setup
- Run-length encoding
- Huffman compression
- LZW compression (using tries)

6. Context

6.1 Event driven simulation using PQs

6.2 B-trees

6.3 Suffix arrays.
- Find longest repeated substring.
- Indexing a string (keyword in context)

6.4 Ford-Fulkerson maxflow.
- Find shortest augmenting path.
- Maximum bipartite matching reduces to maxflow
- maxflow and shortest paths reduce to linear programming

6.5 NP completeness
41 of 45 people found the following review helpful
5.0 out of 5 stars Updated Review For Fourth Edition April 11 2011
By Library Picks Reviews - Published on Amazon.com
Format:Hardcover
Other reviews on this fine text are for older editions with pseudo code. Sedgewick and Wayne have completely revised this new Fourth Edition with plentiful Java scripts for a vast range of applications. A brand new website at Princeton is dedicated to this book and has visualizations, much more code, exercises, answers, bib links, full implementations of many problems, and a complete online summary and synopsis of the book.

The authors suggest this is for a second course in CS, but many serious students, whether independent or in undergrad, will find it useful for self teaching as well. In fact, the new website has self teaching resources if you are "going it alone" in your initial study of algorithms.

Algos cannot really be separated from their underlying data structures, and a serious new addition to this printing and edition is a much better backgrounder on the most up to date data structures, using hyper modern examples like Amazon and Google.

This book covers the basics, and is not an encyclopedia or reference book. It has a lot of detailed descriptions and visuals, and takes the time to be sure the student "gets" the point. In a way, it is in competition with Sedgewick's own Algorithms in C++, Parts 1-4: Fundamentals, Data Structure, Sorting, Searching (Pts. 1-4), which is now in its third edition, and more terse, advanced and encyclopedic. If you want a thorough understanding of the whole field, you probably need both if you're just starting out in the field.

If you're a beginning programmer, and want to get into the underlying logic of sorts, searches, graphs, strings and other fundamentals that drive modeling and the web, this is the place to start.
25 of 28 people found the following review helpful
5.0 out of 5 stars Good introductory text Oct 14 2004
By Bjørn Borud - Published on Amazon.com
Format:Hardcover
I found this book at a university book shop back when I was 14 years old and bought it to learn more about certain algorithms. The reason I bought it was because it looked like it would provide very concrete advice on how to achieve an implementation while not requiring more advanced mathematics than I knew at the time.

Now, many years later I have to say that I can't think of any algorithm book I've come across that manages to balance theory and concrete solutions so well; and I own quite a few books on algorithms. (Some might object to the fact that the book uses Pascal as the implementation language, but I think I've seen this book tailored for other languages too).

Also, for a general book on algorithms, Sedgewick managed to pick a very good mix of topics to cover. According to a friend of mine (whom happens to know Sedgewick personally), the book just represents a cross-section of what Sedgewick himself was interested in.

This book was very useful to me when I was a teenager starting to understand bread and butter algorithms, and it continues to be a good reference still to this day. I would recommend you buy this book if you need a good book on fundamental algorithms.

(Also, the typography is very sober and clean, and the illustrations to most of the problems are very clear)

Listmania!


Look for similar items by category


Feedback


Amazon.ca Privacy Statement Amazon.ca Shipping Information Amazon.ca Returns & Exchanges