Skip to content

Computational Intelligence Paradigms Innovative Applications

Spend $50 to get a free movie!

ISBN-10: 3540794735

ISBN-13: 9783540794738

Edition: 2008

Authors: L. C. Jain, Canicious Abeynayake, Valentina Emilia Balas, Mika Sato-Ilic, George A. Tsihrintzis

List price: $109.99
Blue ribbon 30 day, 100% satisfaction guarantee!
Out of stock
what's this?
Rush Rewards U
Members Receive:
Carrot Coin icon
XP icon
You have reached 400 XP and carrot coins. That is the daily max!


System designers are faced with a large set of data which has to be analysed and processed efficiently. Advanced computational intelligence paradigms present tremendous advantages by offering capabilities such as learning, generalisation and robustness. These capabilities help in designing complex systems which are intelligent and robust.The book includes a sample of research on the innovative applications of advanced computational intelligence paradigms. The characteristics of computational intelligence paradigms such as learning, generalization based on learned knowledge, knowledge extraction from imprecise and incomplete data are the extremely important for the implementation of…    
Customers also bought

Book details

List price: $109.99
Copyright year: 2008
Publisher: Springer Berlin / Heidelberg
Publication date: 6/14/2008
Binding: Hardcover
Pages: 281
Size: 6.14" wide x 9.21" long x 0.27" tall
Weight: 2.838
Language: English

An Introduction to Computational Intelligence Paradigms
A Quest for Adaptable and Interpretable Architectures of Computational Intelligence
MembershipMap: A Data Transformation for Knowledge Discovery Based on Granulation and Fuzzy Membership Aggregation
Advanced Developments and Applications of the Fuzzy ARTMAP Neural Network in Pattern Classification
Large Margin Methods for Structured Output Prediction
Ensemble MLP Classifier Design
Functional Principal Points and Functional Cluster Analysis
Clustering with Size Constraints
Cluster Validating Techniques in the Presence of Duplicates
Fuzzy Blocking Regression Models
Support Vector Machines and Features for Environment Perception in Mobile Robotics
Linkage Analysis in Genetic Algorithms
Author Index