Check nearby libraries
Buy this book
Uncertainty Handling and Quality Assessment in Data Mining provides an introduction to the application of these concepts in Knowledge Discovery and Data Mining. It reviews the state-of-the-art in uncertainty handling and discusses a framework for unveiling and handling uncertainty. Coverage of quality assessment begins with an introduction to cluster analysis and a comparison of the methods and approaches that may be used. The techniques and algorithms involved in other essential data mining tasks, such as classification and extraction of association rules, are also discussed together with a review of the quality criteria and techniques for evaluating the data mining results. This book presents a general framework for assessing quality and handling uncertainty which is based on tested concepts and theories. This framework forms the basis of an implementation tool, 'Uminer' which is introduced to the reader for the first time. This tool supports the key data mining tasks while enhancing the traditional processes for handling uncertainty and assessing quality. Aimed at IT professionals involved with data mining and knowledge discovery, the work is supported with case studies from epidemiology and telecommunications that illustrate how the tool works in 'real world' data mining projects. The book would also be of interest to final year undergraduates or post-graduate students looking at: databases, algorithms, artificial intelligence and information systems particularly with regard to uncertainty and quality assessment.
Check nearby libraries
Buy this book
Previews available in: English
Edition | Availability |
---|---|
1
Uncertainty Handling and Quality Assessment in Data Mining
2012, Springer London, Limited
in English
1447111192 9781447111191
|
zzzz
Libraries near you:
WorldCat
|
2
Uncertainty Handling and Quality Assessment in Data Mining
2003, Island Press
in English
1447100328 9781447100324
|
zzzz
Libraries near you:
WorldCat
|
3
Uncertainty Handling and Quality Assessment in Data Mining
2003, Springer London, Imprint, Springer
electronic resource /
in English
144710031X 9781447100317
|
aaaa
Libraries near you:
WorldCat
|
Book Details
Table of Contents
Edition Notes
Classifications
The Physical Object
ID Numbers
Community Reviews (0)
Feedback?July 7, 2019 | Created by MARC Bot | import new book |