Contrast Data Mining

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Binary Decision Diagram
Binary QSAR
Category=PBT
Category=UMB
Category=UNF
Category=UY
Cellular Automata
Class Cj
Closed Cube
clustering algorithms
computational toxicology
Contrast Data Mining
Contrast Mining
contrast mining algorithms
Contrast Mining Applications
contrast mining in bioinformatics
contrast mining in chemoinformatics
contrast mining techniques
Contrast Pattern
contrast pattern-based classification
customer behaviour modelling
data cube representations
Dataset D1
discriminative gene transfer microarray analysis
Discriminative Patterns
emerging
EP Mining
EPs
eq_bestseller
eq_computing
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
frequent
Frequent Itemsets
Frequent Pattern
Frequent Pattern Tree
genetic algorithms
heart disease prediction
machine
measures on contrast patterns
Microarray Gene Expression Data
Minimum Support Threshold
Mining Frequent Patterns
NB
network security analytics
Occurrence Counts
outlier detection
pattern
Pattern Mining
patterns
Positive Dataset
Rough Sets
spatial data analysis
state
Subgroup Discovery
support
SVM
tree-based structures
university
vector
Vice Versa
wright

Product details

  • ISBN 9781439854327
  • Weight: 960g
  • Dimensions: 156 x 234mm
  • Publication Date: 07 Sep 2012
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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A Fruitful Field for Researching Data Mining Methodology and for Solving Real-Life ProblemsContrast Data Mining: Concepts, Algorithms, and Applications collects recent results from this specialized area of data mining that have previously been scattered in the literature, making them more accessible to researchers and developers in data mining and other fields. The book not only presents concepts and techniques for contrast data mining, but also explores the use of contrast mining to solve challenging problems in various scientific, medical, and business domains.

Learn from Real Case Studies of Contrast Mining ApplicationsIn this volume, researchers from around the world specializing in architecture engineering, bioinformatics, computer science, medicine, and systems engineering focus on the mining and use of contrast patterns. They demonstrate many useful and powerful capabilities of a variety of contrast mining techniques and algorithms, including tree-based structures, zero-suppressed binary decision diagrams, data cube representations, and clustering algorithms. They also examine how contrast mining is used in leukemia characterization, discriminative gene transfer and microarray analysis, computational toxicology, spatial and image data classification, voting analysis, heart disease prediction, crime analysis, understanding customer behavior, genetic algorithms, and network security.

Guozhu Dong is a professor at Wright State University. A senior member of the IEEE and ACM, Dr. Dong holds four U.S. patents and has authored over 130 articles on databases, data mining, and bioinformatics; co-authored Sequence Data Mining; and co-edited Contrast Data Mining and Applications. His research focuses on contrast/emerging pattern mining and applications as well as first-order incremental view maintenance. He has a PhD in computer science from the University of Southern California.

James Bailey is an Australian Research Council Future Fellow in the Department of Computing and Information Systems at the University of Melbourne. Dr. Bailey has authored over 100 articles and is an associate editor of IEEE Transactions on Knowledge and Data Engineering and Knowledge and Information Systems: An International Journal. His research focuses on fundamental topics in data mining and machine learning, such as contrast pattern mining and data clustering, as well as application aspects in areas, including health informatics and bioinformatics. He has a PhD in computer science from the University of Melbourne.