Data Mining,
Edition 2 Practical Machine Learning Tools and Techniques, Second Edition
By Ian H. Witten and Eibe Frank

Publication Date: 08 Jun 2005
Description

Data Mining, Second Edition, describes data mining techniques and shows how they work. The book is a major revision of the first edition that appeared in 1999. While the basic core remains the same, it has been updated to reflect the changes that have taken place over five years, and now has nearly double the references.

The highlights of this new edition include thirty new technique sections; an enhanced Weka machine learning workbench, which now features an interactive interface; comprehensive information on neural networks; a new section on Bayesian networks; and much more.

This text is designed for information systems practitioners, programmers, consultants, developers, information technology managers, specification writers as well as professors and students of graduate-level data mining and machine learning courses.

Key Features

  • Algorithmic methods at the heart of successful data mining—including tried and true techniques as well as leading edge methods
  • Performance improvement techniques that work by transforming the input or output
About the author
By Ian H. Witten, University of Waikato, Hamilton, New Zealand; and Eibe Frank, University of Waikato, Hamilton, New Zealand. Recipients of the 2005 ACM SIGKDD Service Award.
Table of Contents
Preface

1. What’s it all about?
1.1 Data mining and machine learning
1.2 Simple examples: the weather problem and others
1.3 Fielded applications
1.4 Machine learning and statistics
1.5 Generalization as search
1.6 Data mining and ethics
1.7 Further reading

2. Input: Concepts, instances, attributes
2.1 What’s a concept?
2.2 What’s in an example?
2.3 What’s in an attribute?
2.4 Preparing the input
2.5 Further reading

3. Output: Knowledge representation
3.1 Decision tables
3.2 Decision trees
3.3 Classification rules
3.4 Association rules
3.5 Rules with exceptions
3.6 Rules involving relations
3.7 Trees for numeric prediction
3.8 Instance-based representation
3.9 Clusters
3.10 Further reading

4. Algorithms: The basic methods
4.1 Inferring rudimentary rules
4.2 Statistical modeling
4.3 Divide-and-conquer: constructing decision trees
4.4 Covering algorithms: constructing rules
4.5 Mining association rules
4.6 Linear models
4.7 Instance-based learning
4.8 Clustering
4.9 Further reading

5. Credibility: Evaluating what’s been learned
5.1 Training and testing
5.2 Predicting performance
5.3 Cross-validation
5.4 Other estimates
5.5 Comparing data mining schemes
5.6 Predicting probabilities
5.7 Counting the cost
5.8 Evaluating numeric prediction
5.9 The minimum description length principle
5.10 Applying MDL to clustering
5.11 Further reading

6. Implementations: Real machine learning schemes
6.1 Decision trees
6.2 Classification rules
6.3 Extending linear models
6.4 Instance-based learning
6.5 Numeric prediction
6.6 Clustering
6.7 Bayesian networks

7. Transformations: Engineering the input and output
7.1 Attribute selection
7.2 Discretizing numeric attributes
7.3 Some useful transformations
7.4 Automatic data cleansing
7.5 Combining multiple models
7.6 Using unlabeled data
7.7 Further reading

8. Moving on: Extensions and applications
8.1 Learning from massive datasets
8.2 Incorporating domain knowledge
8.3 Text and Web mining
8.4 Adversarial situations
8.5 Ubiquitous data mining
8.6 Further reading

Part II: The Weka machine learning workbench

9. Introduction to Weka
9.1 What’s in Weka?
9.2 How do you use it?
9.3 What else can you do?

10. The Explorer
10.1 Getting started
10.2 Exploring the Explorer
10.3 Filtering algorithms
10.4 Learning algorithms
10.5 Meta-learning algorithms
10.6 Clustering algorithms
10.7 Association-rule learners
10.8 Attribute selection

11. The Knowledge Flow interface
11.1 Getting started
11.2 Knowledge Flow components
11.3 Configuring and connecting the components
11.4 Incremental learning

12. The Experimenter
12.1 Getting started
12.2 Simple setup
12.3 Advanced setup
12.4 The Analyze panel
12.5 Distributing processing over several machines

13. The command-line interface
13.1 Getting started
13.2 The structure of Weka
13.3 Command-line options

14. Embedded machine learning

15. Writing new learning schemes

References
Index
Book details
ISBN: 9780120884070
Page Count: 560
Retail Price : £45.99
Data Mining: Witten & Frank. £34.99. MKP, 2000. ISBN 1558605525
Data Mining: Concepts & Techniques: Han & Kamber. £39.99. MKP, 2000. ISBN 1558604898
Audience
Information systems practitioners, programmers, consultants, developers, information technology managers, specification writers as well as professors and students of graduate-level data mining and machine learning courses