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Data Clustering: Theory, Algorithms, and Applications

Specificaties
Paperback, 184 blz. | Engels
Society for Industrial and Applied Mathematics | e druk, 2007
ISBN13: 9780898716238
Rubricering
Society for Industrial and Applied Mathematics e druk, 2007 9780898716238
Onderdeel van serie ASA-SIAM Series on S
Verwachte levertijd ongeveer 9 werkdagen

Samenvatting

Cluster analysis is an unsupervised process that divides a set of objects into homogeneous groups. This book starts with basic information on cluster analysis, including the classification of data and the corresponding similarity measures, followed by the presentation of over 50 clustering algorithms in groups according to some specific baseline methodologies such as hierarchical, centre-based, and search-based methods. As a result, readers and users can easily identify an appropriate algorithm for their applications and compare novel ideas with existing results. The book also provides examples of clustering applications to illustrate the advantages and shortcomings of different clustering architectures and algorithms. Application areas include pattern recognition, artificial intelligence, information technology, image processing, biology, psychology, and marketing. Suitable as a textbook for an introductory course in cluster analysis or as source material for a graduate-level introduction to data mining.

Specificaties

ISBN13:9780898716238
Taal:Engels
Bindwijze:Paperback
Aantal pagina's:184
Uitgever:Society for Industrial and Applied Mathematics

Inhoudsopgave

Preface; Part I. Clustering, Data and Similarity Measures: 1. Data clustering; 2. DataTypes; 3. Scale conversion; 4. Data standardization and transformation; 5. Data visualization; 6. Similarity and dissimilarity measures; Part II. Clustering Algorithms: 7. Hierarchical clustering techniques; 8. Fuzzy clustering algorithms; 9. Center Based Clustering Algorithms; 10. Search based clustering algorithms; 11. Graph based clustering algorithms; 12. Grid based clustering algorithms; 13. Density based clustering algorithms; 14. Model based clustering algorithms; 15. Subspace clustering; 16. Miscellaneous algorithms; 17. Evaluation of clustering algorithms; Part III. Applications of Clustering: 18. Clustering gene expression data; Part IV. Matlab and C++ for Clustering: 19. Data clustering in Matlab; 20. Clustering in C/C++; A. Some clustering algorithms; B. Thekd-tree data structure; C. Matlab Codes; D. C++ Codes; Subject index; Author index.

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        Data Clustering: Theory, Algorithms, and Applications