Fr. 69.00

Type-2 Fuzzy Decision-Making Theories, Methodologies and Applications

English · Paperback / Softback

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Description

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This book integrates the type-2 fuzzy sets and multiple criteria decision making analysis in recent years and offers an authoritative treatise on the essential topics, both at the theoretical and applied end. In this book, some basic theory, type-2 fuzzy sets, methodology, algorithms, are introduced and then some compelling case studies in decision problems are covered in depth. The authors offer an authoritative treatise on the essential topics, both at the theoretical and applied end; In a systematic and logically organized way, the book exposes the reader to the essentials of the theory of type-2 fuzzy sets, methodology, algorithms, and their applications. Numerous techniques of decision making are carefully generalized by bringing the ideas of type-2 fuzzy sets; this concerns well-known methods including TOPSIS, Analytical Network Process, TODIM, and VIKOR. This book exposes the readers to the essentials of the theory of type-2 fuzzy sets, methodology, algorithms, and their applications.

List of contents

Chapter 1 Type-2 Fuzzy Sets and Its Extensions.- Chapter 2 Multiple criteria decision making with type-2 fuzzy information.- Chapter 3  Interval type-2 fuzzy aggregation operations based on Maclaurin means and its extensions.- Chapter 4  Interval type-2 fuzzy combined ranking method.- Chapter 5 Interval type-2 fuzzy decision making based on TOPSIS.- Chapter 6 Interval type-2 fuzzy decision making based on ANP.- Chapter 7 Interval type-2 fuzzy decision making based on TODIM.- Chapter 8 Interval type-2 fuzzy decision making based on LINMAP.- Chapter 9 An integrated interval type-2 fuzzy decision making based on VIKOR and Prospect theory.- Chapter 10 Interval type-2 fuzzy decision making based on Granular Computing and its application in personalized recommendation.- Chapter 11 Interval Type-2 Fuzzy Group Decision Making by Integrating Improved Best Worst Method with COPRAS for Emergency Material Supplier Selection.

About the author










Jindong Qin has published over 30 papers in uncertainty decision analysis area and these research results have been published in the European Journal of Operational Research, the IEEE Transactions on Fuzzy Systems. He currently serves as an Associate Editor for the International Journal of Fuzzy Systems, the International Journal of Computational Intelligence Systems, and Granular Computing.


Xinwang Liu is currently a Professor with the Department of Management Science and Engineering, School of Economics and Management, Southeast University. He has authored or coauthored more than 100 publications of journals and international conferences. His research interests include type-2 fuzzy logic, aggregation operators, recommend systems and fuzzy decision making.








Report

"The book is well-written. ... This book is a very valuable contribution to the field of multiple criteria decision making. I can recommend it to the practitioners dealing in their professional life with MCDM (e.g. managers and engineers) but also to the researchers in the area and students of mathematics, IT, engineering or management." (Marcin Anholcer, zbMATH 1447.91002, 2020)

Product details

Authors Xinwang Liu, Jindon Qin, Jindong Qin
Publisher Springer, Berlin
 
Languages English
Product format Paperback / Softback
Released 01.08.2020
 
EAN 9789811398933
ISBN 978-981-1398-93-3
No. of pages 271
Dimensions 155 mm x 15 mm x 235 mm
Illustrations XV, 271 p. 43 illus., 29 illus. in color.
Series Uncertainty and Operations Research
Subject Natural sciences, medicine, IT, technology > Mathematics > Probability theory, stochastic theory, mathematical statistics

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