
Ordinal And Relational Clustering (With Cd-rom)
Melvin F. Janowitz(Author)
World Scientific Publishing Co Pte Ltd
Will be published approx. on 10. May 2010
Book
Paperback/Softback
200 pages
978-981-4287-20-3 (ISBN)
Description
Most modern textbooks on cluster analysis are written from the standpoint of computer science, which give the background, description and implementation of computer algorithms. This book proclaims several firsts - the first to present a broad mathematical treatment of the subject, the first that illustrates dissimilarities taking values in a poset, and the first to notice the connection with formal concept analysis which is a powerful tool for investigating hidden structures in large data sets.This book presents the subject from a mathematical viewpoint with careful definitions. All clearly stated axioms are illustrated with concrete examples. New ideas are introduced informally first, and then in a careful, systematic manner. Much of the material has not previously appeared in the literature. It is to be hoped that the book holds promising directive to launch a new research area that is based on graph theory, as well as partially ordered sets. It also suggests the cluster algorithms that can be used for practical applications. The emphasis will be largely on ordinal data and ordinal cluster methods.
More details
Series
Language
English
Place of publication
Singapore
Singapore
Target group
College/higher education
Professional and scholarly
Graduate students and researchers in mathematics, computer science, statistics, operations research, psychology and biology.
Dimensions
Height: 249 mm
Width: 170 mm
Thickness: 23 mm
Weight
590 gr
ISBN-13
978-981-4287-20-3 (9789814287203)
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Schweitzer Classification
Person
Content
Informal Background; Dissimilarities and Clusters; Ordinal Data; Continuity and Ordinal Continuity; Classification of Monotone Equivariant Cluster Methods; Clustering Based on Posets.