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OverviewThis text discusses theories that have proven useful in applying neural networks and fuzzy systems to real world problems. It includes performance comparison of neural networks and fuzzy systems using data gathered from real systems. Topics covered include the Hopfield network for combinatorial optimization problems, multilayered neural networks for pattern classification and function approximation, fuzzy systems that have the same functions as multilayered networks, and composite systems that have been successfully applied to real world problems. The author also includes representative neural network models such as the Kohonen network and radial basis function network. Recent fuzzy systems with learning capabilities are also covered. The advantages and disadvantages of neural networks and fuzzy systems are examined. The performance of these two systems in license plate recognition, a water purification plant, blood cell classification, and other real world problems is compared. Full Product DetailsAuthor: Shigeo AbePublisher: Springer Imprint: Springer Edition: 1997 ed. Dimensions: Width: 15.50cm , Height: 1.70cm , Length: 23.50cm Weight: 1.270kg ISBN: 9780792398141ISBN 10: 0792398149 Pages: 258 Publication Date: 30 November 1996 Audience: College/higher education , Professional and scholarly , Postgraduate, Research & Scholarly , Professional & Vocational Format: Hardback Publisher's Status: Active Availability: In Print ![]() This item will be ordered in for you from one of our suppliers. Upon receipt, we will promptly dispatch it out to you. For in store availability, please contact us. Table of Contents1 Overview of Neural Networks.- 1.1 Brief History of Neural Network Research.- 1.2 Neural Network Models.- 1.3 Expectations for Neural Networks.- 2 The Hopfield Network.- 2.1 Definition of the Continuous Hopfield Network.- 2.2 Stability of Equilibrium Points.- 2.3 Suppression of Spurious States.- 2.4 Solution of the Hopfield Network.- 2.5 Variants of the Continuous Hopfield Network.- 2.6 Performance Evaluation for Traveling Salesman Problems and LSI Module Placement Problems.- Problems.- 3 Multilayered Networks.- 3.1 Network Training.- 3.2 Determination of the Network Structure.- 3.3 Synthesis of the Network.- 3.4 Pattern Classification by the Decision Tree Extracted from the Network.- 3.5 Acceleration of Training and Improvement of Generalization Ability.- Problems.- 4 Other Neural Networks.- 4.1 The Kohonen Network.- 4.2 Variants of Multilayered Networks.- 4.3 ART Models.- Problem.- 5 Overview of Fuzzy Systems.- 5.1 Fuzzy Sets.- 5.2 Fuzzy Rule Inference.- 5.3 Comparison of Neural Networks and Fuzzy Systems.- 5.4 Fuzzy Rule Extraction.- Problems.- 6 Fuzzy Rule Extraction for Pattern Classification from Numerical Data.- 6.1 Approximation by Cluster Centers.- 6.2 Approximation by Hyperboxes.- 6.3 Approximation by Polyhedrons.- 6.4 Performance Evaluation.- Problems.- 7 Fuzzy Rule Extraction for Function Approximation from Numerical Data.- 7.1 Clustering of Input Space.- 7.2 Clustering of Input and Output Spaces.- 7.3 Performance Evaluation of a Water Purification Plant and Time Series Prediction.- Problems.- 8 Composite Systems.- 8.1 Determining the Optimal Structure of the Composite Multilayered Network Classifier.- 8.2 Applications.- References.- Solutions to Problems.- Author Index.ReviewsAuthor InformationTab Content 6Author Website:Countries AvailableAll regions |