Hamel | Knowledge Discovery with Support Vector Machines | E-Book | sack.de
E-Book

E-Book, Englisch, Band 1, 262 Seiten, E-Book

Reihe: Wiley Series on Methods and Applications

Hamel Knowledge Discovery with Support Vector Machines


1. Auflage 2009
ISBN: 978-0-470-50304-1
Verlag: John Wiley & Sons
Format: PDF
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)

E-Book, Englisch, Band 1, 262 Seiten, E-Book

Reihe: Wiley Series on Methods and Applications

ISBN: 978-0-470-50304-1
Verlag: John Wiley & Sons
Format: PDF
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)



An easy-to-follow introduction to support vector machines
This book provides an in-depth, easy-to-follow introduction tosupport vector machines drawing only from minimal, carefullymotivated technical and mathematical background material. It beginswith a cohesive discussion of machine learning and goes on tocover:
* Knowledge discovery environments
* Describing data mathematically
* Linear decision surfaces and functions
* Perceptron learning
* Maximum margin classifiers
* Support vector machines
* Elements of statistical learning theory
* Multi-class classification
* Regression with support vector machines
* Novelty detection
Complemented with hands-on exercises, algorithm descriptions,and data sets, Knowledge Discovery with Support VectorMachines is an invaluable textbook for advanced undergraduateand graduate courses. It is also an excellent tutorial on supportvector machines for professionals who are pursuing research inmachine learning and related areas.

Hamel Knowledge Discovery with Support Vector Machines jetzt bestellen!

Autoren/Hrsg.


Weitere Infos & Material


Preface.
PART I.
1 What is Knowledge Discovery?
1.1 Machine Learning.
1.2 The Structure of the Universe X.
1.3 Inductive Learning.
1.4 Model Representations.
Exercises.
Bibliographic Notes.
2 Knowledge Discovery Environments.
2.1 Computational Aspects of Knowledge Discovery.
2.1.1 Data Access.
2.1.2 Visualization.
2.1.3 Data Manipulation.
2.1.4 Model Building and Evaluation.
2.1.5 Model Deployment.
2.2 Other Toolsets.
Exercises.
Bibliographic Notes.
3 Describing Data Mathematically.
3.1 From Data Sets to Vector Spaces.
3.1.1 Vectors.
3.1.2 Vector Spaces.
3.2 The Dot Product as a Similarity Score.
3.3 Lines, Planes, and Hyperplanes.
Exercises.
Bibliographic Notes.
4 Linear Decision Surfaces and Functions.
4.1 From Data Sets to Decision Functions.
4.1.1 Linear Decision Surfaces through the Origin.
4.1.2 Decision Surfaces with an Offset Term.
4.2 A Simple Learning Algorithm.
4.3 Discussion.
Exercises.
Bibliographic Notes.
5 Perceptron Learning.
5.1 Perceptron Architecture and Training.
5.2 Duality.
5.3 Discussion.
Exercises.
Bibliographic Notes.
6 Maximum Margin Classifiers.
6.1 Optimization Problems.
6.2 Maximum Margins.
6.3 Optimizing the Margin.
6.4 Quadratic Programming.
6.5 Discussion.
Exercises.
Bibliographic Notes.
PART II.
7 Support Vector Machines.
7.1 The Lagrangian Dual.
7.2 Dual MaximumMargin Optimization.
7.2.1 The Dual Decision Function.
7.3 Linear Support Vector Machines.
7.4 Non-Linear Support Vector Machines.
7.4.1 The Kernel Trick.
7.4.2 Feature Search.
7.4.3 A Closer Look at Kernels.
7.5 Soft-Margin Classifiers.
7.5.1 The Dual Setting for Soft-Margin Classifiers.
7.6 Tool Support.
7.6.1 WEKA.
7.6.2 R.
7.7 Discussion.
Exercises.
Bibliographic Notes.
8 Implementation.
8.1 Gradient Ascent.
8.1.1 The Kernel-Adatron Algorithm.
8.2 Quadratic Programming.
8.2.1 Chunking.
8.3 Sequential Minimal Optimization.
8.4 Discussion.
Exercises.
Bibliographic Notes.
9 Evaluating What has been Learned.
9.1 Performance Metrics.
9.1.1 The Confusion Matrix.
9.2 Model Evaluation.
9.2.1 The Hold-Out Method.
9.2.2 The Leave-One-Out Method.
9.2.3 N-Fold Cross-Validation.
9.3 Error Confidence Intervals.
9.3.1 Model Comparisons.
9.4 Model Evaluation in Practice.
9.4.1 WEKA.
9.4.2 R.
Exercises.
Bibliographic Notes.
10 Elements of Statistical Learning Theory.
10.1 The VC-Dimension and Model Complexity.
10.2 A Theoretical Setting for Machine Learning.
10.3 Empirical Risk Minimization.
10.4 VC-Confidence.
10.5 Structural Risk Minimization.
10.6 Discussion.
Exercises.
Bibliographic Notes.
PART III.
11 Multi-Class Classification.
11.1 One-versus-the-Rest Classification.
11.2 Pairwise Classification.
11.3 Discussion.
Exercises.
Bibliographic Notes.
12 Regression with Support Vector Machines.
12.1 Regression as Machine Learning.
12.2 Simple and Multiple Linear Regression.
12.3 Regression with Maximum Margin Machines.
12.4 Regression with Support Vector Machines.
12.5 Model Evaluation.
12.6 Tool Support.
12.6.1 WEKA.
12.6.2 R.
Exercises.
Bibliographic Notes.
13 Novelty Detection.
13.1 Maximum Margin Machines.
13.2 The Dual Setting.
13.3 Novelty Detection in R.
Exercises.
Bibliographic Notes.
Appendix A: Notation.
Appendix B: A Tutorial Introduction to R.
B.1 Programming Constructs.
B.2 Data Constructs.
B.3 Basic Data Analysis.
Bibliographic Notes.
References.
Index.


Lutz Hamel, PhD, teaches at the University of Rhode Island, where he founded the machine learning and data mining group. His major research interests are computational logic, machine learning, evolutionary computation, data mining, bioinformatics, and computational structures in art and literature.



Ihre Fragen, Wünsche oder Anmerkungen
Vorname*
Nachname*
Ihre E-Mail-Adresse*
Kundennr.
Ihre Nachricht*
Lediglich mit * gekennzeichnete Felder sind Pflichtfelder.
Wenn Sie die im Kontaktformular eingegebenen Daten durch Klick auf den nachfolgenden Button übersenden, erklären Sie sich damit einverstanden, dass wir Ihr Angaben für die Beantwortung Ihrer Anfrage verwenden. Selbstverständlich werden Ihre Daten vertraulich behandelt und nicht an Dritte weitergegeben. Sie können der Verwendung Ihrer Daten jederzeit widersprechen. Das Datenhandling bei Sack Fachmedien erklären wir Ihnen in unserer Datenschutzerklärung.