Fr. 135.00

A Heuristic Approach to Possibilistic Clustering: Algorithms and Applications

English · Paperback / Softback

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Description

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The present book outlines a new approach to possibilistic clustering in which the sought clustering structure of the set of objects is based directly on the formal definition of fuzzy cluster and the possibilistic memberships are determined directly from the values of the pairwise similarity of objects. The proposed approach can be used for solving different classification problems. Here, some techniques that might be useful at this purpose are outlined, including a methodology for constructing a set of labeled objects for a semi-supervised clustering algorithm, a methodology for reducing analyzed attribute space dimensionality and a methods for asymmetric data processing. Moreover, a technique for constructing a subset of the most appropriate alternatives for a set of weak fuzzy preference relations, which are defined on a universe of alternatives, is described in detail, and a method for rapidly prototyping the Mamdani's fuzzy inference systems is introduced. This book addresses engineers, scientists, professors, students and post-graduate students, who are interested in and work with fuzzy clustering and its applications

List of contents

Introduction.- Heuristic Algorithms of Possibilistic Clustering.- Clustering Approaches for the Uncertain Data.- Applications of the Heuristic Algorithms of Possibilistic Clustering.

Summary

The present book outlines a new approach to possibilistic clustering in which the sought clustering structure of the set of objects is based directly on the formal definition of fuzzy cluster and the possibilistic memberships are determined directly from the values of the pairwise similarity of objects.   The proposed approach can be used for solving different classification problems. Here, some techniques that might be useful at this purpose are outlined, including a methodology for constructing a set of labeled objects for a semi-supervised clustering algorithm, a methodology for reducing analyzed attribute space dimensionality and a methods for asymmetric data processing. Moreover,  a technique for constructing a subset of the most appropriate alternatives for a set of weak fuzzy preference relations, which are defined on a universe of alternatives, is described in detail, and a method for rapidly prototyping the Mamdani’s fuzzy inference systems is introduced. This book addresses engineers, scientists, professors, students and post-graduate students, who are interested in and work with fuzzy clustering and its applications

Product details

Authors Dmitri A Viattchenin, Dmitri A. Viattchenin
Publisher Springer, Berlin
 
Languages English
Product format Paperback / Softback
Released 01.01.2015
 
EAN 9783642443015
ISBN 978-3-642-44301-5
No. of pages 227
Dimensions 154 mm x 13 mm x 234 mm
Weight 373 g
Illustrations XII, 227 p.
Series Studies in Fuzziness and Soft Computing
Studies in Fuzziness and Soft Computing
Subjects Natural sciences, medicine, IT, technology > Technology > General, dictionaries

B, Data Mining, Artificial Intelligence, Wissensbasierte Systeme, Expertensysteme, engineering, Data Mining and Knowledge Discovery, Computational Intelligence, Expert systems / knowledge-based systems

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