Neuro-fuzzy and Soft Computing : A Computational Approach to Learning and Machine Intelligence /
Jyh-Shing Roger Jang, Chuen-Tsai Sun, Eiji Mizutani.
- Upper Saddle River, N.J. : Prentice Hall International, c1997.
- xxvi, 614 p. : ill. ; 24 cm.
- MATLAB curriculum series .
Includes bibliographical references and index.
1. Introduction to Neuro-Fuzzy and Soft Computing. I. FUZZY SET THEORY. 2. Fuzzy Sets. 3. Fuzzy Rules and Fuzzy Reasoning. 4. Fuzzy Inference Systems. II. REGRESSION AND OPTIMIZATION. 5. Least-Squares Methods for System Identification. 6. Derivative-Based Optimization. 7. Derivative-Free Optimization. III. NEURAL NETWORKS. 8. Adaptive Networks. 9. Supervised Learning Neural Networks. 10. Learning from Reinforcement. 11. Unsupervised Learning and Other Neural Networks. IV. NEURO-FUZZY MODELING. 12. ANFIS: Adaptive-Networks-based Fuzzy Inference Systems. 13. Coactive Neuro-Fuzzy Modeling: Towards Generalized ANFIS. V. ADVANCED NEURO-FUZZY MODELING. 14. Classification and Regression Trees. 15. Data Clustering Algorithms. 16. Rulebase Structure Identification. VI. NEURO-FUZZY CONTROL. 17. Neuro-Fuzzy Control I. 18. Neuro-Fuzzy Control II. VII. ADVANCED APPLICATIONS. 19. ANFIS Applications. 20. Fuzzy-Filtered Neural Networks. 21. Fuzzy Theory and Genetic Algorithms in Game Playing. 22. Soft Computing for Color Recipe Prediction.
Intended for use in courses on computational intelligence at either the college senior or first-year graduate level. This text provides the first comprehensive treatment of the methodologies underlying neuro-fuzzy and soft computing, an evolving branch within the scope of computational intelligence. The book places equal emphasis on theoretical aspects of covered methodologies, empirical observations and verifications of various applications in practice.