
Résumé
Written expressly for database practitioners and
professionals, this book begins with a conceptual
introduction designed to get you up to speed. This is
followed by a comprehensive and state-of-the-art coverage
of data mining concepts and techniques. Each chapter
functions as a stand-alone guide to a critical topic,
presenting proven algorithms and sound implementations
ready to be used directly or with strategic modification
against live data. Wherever possible, the authors raise and
answer questions of utility, feasibility, optimization, and
scalability, keeping your eye on the issues that will
affect your project's results and your overall
success.
Data Mining: Concepts and Techniques is the master
reference that practitioners and researchers have long been
seeking. It is also the obvious choice for academic and
professional classrooms.
Features:
- Offers a comprehensive, practical look at the concepts
and techniques you need to know to get the most out of real
business data.
- Organized as a series of stand-alone chapters so you
can begin anywhere and immediately apply what you
learn.
- Presents dozens of algorithms and implementation
examples, all in easily understood pseudo-code and suitable
for use in real-world, large-scale data mining
projects.
- Provides in-depth, practical coverage of essential data
mining topics, including OLAP and data warehousing, data
preprocessing, concept description, association rules,
classification and prediction, and cluster analysis.
- Addresses advanced topics such as mining object-relational databases, spatial databases, multimedia databases, time-series databases, text databases, the World Wide Web, and applications in several fields.
Contents
- 1 Introduction
- 2 Data Warehouse and OLAP Technology for Data
Mining
- 3 Data Preparation
- 4 Data Mining Primitives, Languages, and System
Architectures
- 5 Concept Description: Characterization and
Comparison
- 6 Mining Association Rules in Large Databases
- 7 Classification and Prediction
- 8 Cluster Analysis
- 9 Mining Complex Types of Data
- 10 Data Mining Applications and Trends in Data
Mining
- Appendix A An Introduction to Microsoft's OLE DB for
Data Mining
- Appendix B An Introduction to DBMiner
- Bibliography
L'auteur - Jiawei Han
Jiawei Han is Director of the Intelligent Database Systems Research Laboratory and Professor in the School of Computing Science at Simon Fraser University. Well known for his research in the areas of data mining and database systems, he has served on program committees for dozens of international conferences and workshops and on editorial boards for several journals, including IEEE Transactions on Knowledge and Data Engineering and Data Mining and Knowledge Discovery.
L'auteur - Micheline Kamber
Micheline Kamber is a researcher and freelance technical writer with an M.S. in Computer Science (Artificial Intelligence). She is a member of the Intelligent Database Systems Research Laboratory at Simon Fraser University.
Caractéristiques techniques
PAPIER | |
Éditeur(s) | Morgan Kaufmann |
Auteur(s) | Jiawei Han, Micheline Kamber |
Parution | 01/08/2000 |
Nb. de pages | 549 |
Format | 19 x 24 |
Couverture | Relié |
Poids | 1170g |
Intérieur | Noir et Blanc |
EAN13 | 9781558604896 |
ISBN13 | 978-1-55860-489-6 |
Avantages Eyrolles.com
Consultez aussi
- Les meilleures ventes en Graphisme & Photo
- Les meilleures ventes en Informatique
- Les meilleures ventes en Construction
- Les meilleures ventes en Entreprise & Droit
- Les meilleures ventes en Sciences
- Les meilleures ventes en Littérature
- Les meilleures ventes en Arts & Loisirs
- Les meilleures ventes en Vie pratique
- Les meilleures ventes en Voyage et Tourisme
- Les meilleures ventes en BD et Jeunesse