Home   FAQs   New Arrivals   Specials   Pricing & Shipping   Location   Corporate Services   Why Choose Bookware?  
 Search:   
Call our store: 9922 6266 (from within Sydney) or 1800 734 567 (from outside Sydney)
 View Cart   Check Out   
 
Browse by Subject
 Nepean TAFE 2012
I.T
 .NET
 Windows 7
 Adobe CS5
 Cisco
 CCNA 2012
 CCNP 2012
 Java
 VB
 ASP
 Web Design
 E-Commerce
 Project Management
 ITIL
 Macintosh
 Linux
 Windows Server 2008
 SAP
 Sharepoint 2010
Certification
 MCITP
 MCTS
Economics and Business
 Accounting
 Business Information Systems
 Economics
 Finance
 Management
 Marketing
 TAX
 Human Resources
Academic
 Law
 Nursing
 Medical

Data Mining: Practical Machine Learning Tools and Techniques with Java Implementations (1st Edition) - If you want to order the 2nd Edition, please peform a new search using the following ISBN: 0120884070

by: Ian H. Witten, Eibe Frank

Notify me when in stock

On-line Price: $116.00 (includes GST)

Paperback package 416

13%Off Retail Price

You save: $17.00

OUT OF PRINT...must be sought from extended supplier network... Usual delay approx 3 weeks...Subject to change..
Price/availability/options for all order will be confirmed by reply email before processing.

Retail Price: $133.00

Publisher: ,1999/01/10

Category: DATA WAREHOUSING Level:

ISBN: 1558605525
ISBN13: 9781558605527

Add to Shopping Cart

'This is a milestone in the synthesis of data mining, data analysis, information theory, and machine learning.'


  -Jim Gray, Microsoft Research


  This book offers a thorough grounding in machine learning concepts as well as practical advice on applying machine learning tools and techniques in real-world data mining situations. Inside, you?l learn all you need to know about preparing inputs, interpreting outputs, evaluating results, and the algorithmic methods at the heart of successful data mining?ncluding both tried-and-true techniques of the past and Java-based methods at the leading edge of contemporary research. If you?e involved at any level in the work of extracting usable knowledge from large collections of data, this clearly written and effectively illustrated book will prove an invaluable resource.


  Complementing the authors·instruction is a fully functional platform-independent Java software system for machine learning, available for download. Apply it to the sample data sets provided to refine your data mining skills, apply it to your own data to discern meaningful patterns and generate valuable insights, adapt it for your specialized data mining applications, or use it to develop your own machine learning schemes.


  Features


  ·Helps you select appropriate approaches to particular problems and to compare and evaluate the results of different techniques.


  ·Covers performance improvement techniques, including input preprocessing and combining output from different methods.


  ·Comes with downloadable machine learning software: use it to master the techniques covered inside, apply it to your own projects, and/or customize it to meet special needs.


  Authors:


      Ian H. Witten is professor of computer science at the University of Waikato in New Zealand. He is a fellow of the ACM and the Royal Society of New Zealand and a member of professional computing, information retrieval, and engineering associations in the UK, US, Canada, and New Zealand. He is coauthor of Managing Gigabytes (1999), The Reactive Keyboard (1992), and Text Compression (1990) and author of many journal articles and conference papers.


  Eibe Frank is a researcher in the Machine Learning group at the University of Waikato. He holds a degree in computer science from the University of Karlsruhe in Germany and is the author of several papers, both presented at machine learning conferences and published in machine learning journals.


  

Table of Contents

1. What? It All About?

2. Input: Concepts, Instances, Attributes

3. Output: Knowledge Representation

4. Algorithms: The Basic Methods

5. Credibility: Evaluating What? Been Learned

6. Implementations: Real Machine Learning Schemes

7. Moving On: Engineering The Input And Output

8. Nuts And Bolts: Machine Learning Algorithms In Java

9. Looking Forward


      Web-Enhanced:


      Check out the accompanying software at the author's site: http://www.cs.waikato.ac.nz/ml/weka


  Teaching material


  Powerpoint slides

A Powerpoint presentation containing all the figures from the book can be downloaded by clicking here.

PDF slides

Part I

Part II

Part III

Part IV

Part V

Part VI

Part VII

Exams

An example exam.

An exam and the corresponding answers. [Available to instructors only; request a password from your academic sales representative]

Assignments

Assignment 1

Assignment 2

Assignment 3

Assignment 4

Assignment 5

Assignment 6

Quizzes

Quiz 1

Quiz 2

Quiz 3

Quiz 4

Quiz 5

Quiz 6

Quiz 7

Quiz 8

Quiz 9