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(Ebook) Introduction to Clustering Large and High-Dimensional Data by Jacob Kogan ISBN 9780511257483, 9780521852678, 9780521617932, 9780511254802, 0511257481, 0521852676, 0521617936

  • SKU: EBN-1913938
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Instant download (eBook) Introduction to Clustering Large and High-Dimensional Data after payment.
Authors:Jacob Kogan
Pages:222 pages.
Year:2006
Editon:1
Publisher:Cambridge University Press
Language:english
File Size:1.34 MB
Format:pdf
ISBNS:9780511257483, 9780521852678, 9780521617932, 9780511254802, 0511257481, 0521852676, 0521617936
Categories: Ebooks

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(Ebook) Introduction to Clustering Large and High-Dimensional Data by Jacob Kogan ISBN 9780511257483, 9780521852678, 9780521617932, 9780511254802, 0511257481, 0521852676, 0521617936

There is a growing need for a more automated system of partitioning data sets into groups, or clusters. For example, digital libraries and the World Wide Web continue to grow exponentially, the ability to find useful information increasingly depends on the indexing infrastructure or search engine. Clustering techniques can be used to discover natural groups in data sets and to identify abstract structures that might reside there, without having any background knowledge of the characteristics of the data. Clustering has been used in a variety of areas, including computer vision, VLSI design, data mining, bio-informatics (gene expression analysis), and information retrieval, to name just a few. This book focuses on a few of the most important clustering algorithms, providing a detailed account of these major models in an information retrieval context. The beginning chapters introduce the classic algorithms in detail, while the later chapters describe clustering through divergences and show recent research for more advanced audiences.
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