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Probability Collectives: Intelligent Systems Reference Library, cartea 86

Autor Anand Jayant Kulkarni, Kang Tai, Ajith Abraham
en Limba Engleză Hardback – 23 mar 2015
This book provides an emerging computational intelligence tool in the framework of collective intelligence for modeling and controlling distributed multi-agent systems referred to as Probability Collectives. In the modified Probability Collectives methodology a number of constraint handling techniques are incorporated, which also reduces the computational complexity and improved the convergence and efficiency. Numerous examples and real world problems are used for illustration, which may also allow the reader to gain further insight into the associated concepts.
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Specificații

ISBN-13: 9783319159997
ISBN-10: 3319159992
Pagini: 168
Ilustrații: IX, 157 p. 68 illus.
Dimensiuni: 160 x 241 x 15 mm
Greutate: 0.42 kg
Ediția:2015
Editura: Springer
Colecția Intelligent Systems Reference Library
Seria Intelligent Systems Reference Library

Locul publicării:Cham, Switzerland

Public țintă

Research

Cuprins

Introduction to Optimization.- Probability Collectives: A Distributed Optimization Approach.- Constrained Probability Collectives: A Heuristic Approach.- Constrained Probability Collectives with a Penalty Function Approach.- Constrained Probability Collectives With Feasibility-Based Rule I.- Probability Collectives for Discrete and Mixed Variable Problems.- Probability Collectives with Feasibility-Based Rule II.

Recenzii

“The book contains numerous overviews of the optimization literature, and each chapter has a comprehensive bibliography. The book will be of interest to both students who are interested in optimization and practitioners.” (J. P. E. Hodgson, Computing Reviews, June, 2015)

Textul de pe ultima copertă

This book provides an emerging computational intelligence tool in the framework of collective intelligence for modeling and controlling distributed multi-agent systems referred to as Probability Collectives. In the modified Probability Collectives methodology a number of constraint handling techniques are incorporated, which also reduces the computational complexity and improved the convergence and efficiency. Numerous examples and real world problems are used for illustration, which may also allow the reader to gain further insight into the associated concepts.



Caracteristici

Provides the core and underlying principles and analysis of the different concepts in the framework of Collective Intelligence for modeling and controlling distributed Multi-Agent Systems Discusses in detail the modified Probability Collectives approach proposed by the authors Emphasizes development of the fundamental results from basic concepts Numerous examples/problems are worked out in the text allowing the reader to gain further insight into the associated concepts Written for engineers, scientists and students in Optimization, Computational Intelligence or Artificial Intelligence and particularly involved in the Collective Intelligence field Includes supplementary material: sn.pub/extras