
Knowledge Discovery in Multiple Databases
Springer (Publisher)
Published on 4. October 2012
Book
Paperback/Softback
XII, 233 pages
978-1-4471-1050-7 (ISBN)
Description
Many organizations have an urgent need of mining their multiple databases inherently distributed in branches (distributed data). In particular, as the Web is rapidly becoming an information flood, individuals and organizations can take into account low-cost information and knowledge on the Internet when making decisions. How to efficiently identify quality knowledge from different data sources has become a significant challenge. This challenge has attracted a great many researchers including the au thors who have developed a local pattern analysis, a new strategy for dis covering some kinds of potentially useful patterns that cannot be mined in traditional multi-database mining techniques. Local pattern analysis deliv ers high-performance pattern discovery from multiple databases. There has been considerable progress made on multi-database mining in such areas as hierarchical meta-learning, collective mining, database classification, and pe culiarity discovery. While these techniques continue to be future topics of interest concerning multi-database mining, this book focuses on these inter esting issues under the framework of local pattern analysis. The book is intended for researchers and students in data mining, dis tributed data analysis, machine learning, and anyone else who is interested in multi-database mining. It is also appropriate for use as a text supplement for broader courses that might also involve knowledge discovery in databases and data mining.
Reviews / Votes
From the reviews:
"The book contains the latest on research in database multi-mining (32 papers published after 2000) and offers for consideration a local-pattern analysis framework for pattern discovery from multiple data sources. Starting from the local pattern in multiple data bases, the authors propose . a new pattern named 'high-vote' pattern based on statistical analysis of vote ratio received by a pattern from each branch of the company." (Silviu Craciunas, Zentralblatt MATH, Vol. 1067, 2005)
More details
Series
Edition
Softcover reprint of the original 1st ed. 2004
Language
English
Place of publication
London
United Kingdom
Target group
Professional and scholarly
Research
Illustrations
XII, 233 p.
Dimensions
Height: 235 mm
Width: 155 mm
Thickness: 14 mm
Weight
382 gr
ISBN-13
978-1-4471-1050-7 (9781447110507)
DOI
10.1007/978-0-85729-388-6
Schweitzer Classification
Other editions
Additional editions

Shichao Zhang | Chengqi Zhang | Xindong Wu
Knowledge Discovery in Multiple Databases
Book
08/2004
Springer
€105.50
Shipment within 15-20 days
Content
1. Importance of Multi-database Mining.- 1.1 Introduction.- 1.2 Role of Multi-database Mining in Real-world Applications.- 1.3 Multi-database Mining Problems.- 1.4 Differences Between Mono- and Multi-database Mining.- 1.5 Evolution of Multi-database Mining.- 1.6 Limitations of Previous Techniques.- 1.7 Process of Multi-database Mining.- 1.8 Features of the Defined Process.- 1.9 Major Contributions of This Book.- 1.10 Organization of the Book.- 2. Data Mining and Multi-database Mining.- 2.1 Introduction.- 2.2 Knowledge Discovery in Databases.- 2.3 Association Rule Mining.- 2.4 Research into Mining Mono-databases.- 2.5 Research into Mining Multi-databases.- 2.6 Summary.- 3. Local Pattern Analysis.- 3.1 Introduction.- 3.2 Previous Multi-database Mining Techniques.- 3.3 Local Patterns.- 3.4 Local Instance Analysis Inspired by Competition in Sports.- 3.5 The Structure of Patterns in Multi-database Environments.- 3.6 Effectiveness of Local Pattern Analysis.- 3.7 Summary.- 4. Identifying Quality Knowledge.- 4.1 Introduction.- 4.2 Problem Statement.- 4.3 Nonstandard Interpretation.- 4.4 Proof Theory.- 4.5 Adding External Knowledge.- 4.6 The Use of the Framework.- 4.7 Summary.- 5. Database Clustering.- 5.1 Introduction.- 5.2 Effectiveness of Classifying.- 5.3 Classifying Databases.- 5.4 Searching for a Good Classification.- 5.5 Algorithm Analysis.- 5.6 Evaluation of Application-independent Database Classification.- 5.7 Summary.- 6. Dealing with Inconsistency.- 6.1 Introduction.- 6.2 Problem Statement.- 6.3 Definitions of Formal Semantics.- 6.4 Weighted Majority.- 6.5 Mastering Local Pattern Sets.- 6.6 Examples of Synthesizing Local Pattern Sets.- 6.7 A Syntactic Characterization.- 6.8 Summary.- 7. Identifying High-vote Patterns.- 7.1 Introduction.- 7.2 Illustration of High-votePatterns.- 7.3 Identifying High-vote Patterns.- 7.4 Algorithm Design.- 7.5 Identifying High-vote Patterns Using a Fuzzy Logic Controller.- 7.6 High-vote Pattern Analysis.- 7.7 Suggested Patterns.- 7.8 Summary.- 8. Identifying Exceptional Patterns.- 8.1 Introduction.- 8.2 Interesting Exceptional Patterns.- 8.3 Algorithm Design.- 8.4 Identifying Exceptions with a Fuzzy Logic Controller.- 8.5 Summary.- 9. Synthesizing Local Patterns by Weighting.- 9.1 Introduction.- 9.2 Problem Statement.- 9.3 Synthesizing Rules by Weighting.- 9.4 Improvement of Synthesizing Model.- 9.5 Algorithm Analysis.- 9.6 Summary.- 10. Conclusions and Future Work.- 10.1 Conclusions.- 10.2 Future Work.- References.