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Data Clustering: Theory, Algorithms, and Applications
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Clustering, Data and Similarity Measures: 1. data clustering 2. data types 3. scale conversion 4. data standardization and transformation 5. data visualization 6. Similarity and dissimilarity measures 7. clustering Algorithms.Abstract:
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.read more
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K-Profiles: A Nonlinear Clustering Method for Pattern Detection in High Dimensional Data.
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