Handbook of cluster analysis / [edited by] Christian Hennig...[et al.].
Material type:
- 9781466551886
- 000SA.072 23 H516
Item type | Current library | Call number | Status | Date due | Barcode | Item holds | |
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Books | ISI Library, Kolkata | 000SA.072 H516 (Browse shelf(Opens below)) | Available | 137462 |
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000SA.072 B995 Cluster analysis / | 000SA.072 C392 Partitional clustering algorithms / | 000SA.072 G977 On efficient center-based clustering: from unsupervised learning to clustering under weak supervision/ | 000SA.072 H516 Handbook of cluster analysis / | 000SA.072 R614 Robust cluster analysis and variable selection / | 000SA.072 Su966 Dynamic mixed models for familial longitudinal data / | 000SA.073 D979 Some contributions to discriminant analysis using different notions of data depth / |
Includes bibliographical references and index.
Section I. Optimization methods --
Section II. Dissimilarity-based methods --
Section III. Methods based on probability models --
Section IV. Methods based on density modes and level sets --
Section V. Specific cluster and data formats --
Section VI. Cluster validation and further general issues.
The book is organized according to the traditional core approaches to cluster analysis, from the origins to recent developments. After an overview of approaches and a quick journey through the history of cluster analysis, the book focuses on the four major approaches to cluster analysis. These approaches include methods for optimizing an objective function that describes how well data is grouped around centroids, dissimilarity-based methods, mixture models and partitioning models, and clustering methods inspired by nonparametric density estimation. The book also describes additional approaches to cluster analysis, including constrained and semi-supervised clustering, and explores other relevant issues, such as evaluating the quality of a cluster.
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