Pattern Classification
Autor Shigeo Abeen Limba Engleză Hardback – 11 dec 2000
The book consists of two parts: Pattern Classification and Function Approximation. In the first part, based on the synthesis principle of the neural-network classifier: A new learning paradigm is discussed and classification performance and training time of the new paradigm for several real-world data sets are compared with those of the widely-used back-propagation algorithm; Fuzzy classifiers of different architectures based on fuzzy rules can be defined with hyperbox, polyhedral, or ellipsoidal regions. The book discusses the unified approach for training these fuzzy classifiers; The performance of the newly-developed fuzzy classifiers and the conventional classifiers such as nearest-neighbor classifiers and support vector machines are evaluated using several real-world data sets and their advantages and disadvantages are clarified.
In the second part: Function approximation is discussed extending the discussions in the first part; Performance of the function approximators is compared.
This book is aimed primarily at researchers and practitioners in the field of artificial intelligence and neural networks.
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Specificații
ISBN-13: 9781852333522
ISBN-10: 1852333529
Pagini: 352
Ilustrații: XIX, 327 p.
Dimensiuni: 160 x 241 x 24 mm
Greutate: 0.69 kg
Ediția:2001
Editura: Springer
Locul publicării:London, United Kingdom
ISBN-10: 1852333529
Pagini: 352
Ilustrații: XIX, 327 p.
Dimensiuni: 160 x 241 x 24 mm
Greutate: 0.69 kg
Ediția:2001
Editura: Springer
Locul publicării:London, United Kingdom
Public țintă
Professional/practitionerCuprins
I. Pattern Classification.- 1. Introduction.- 2. Multilayer Neural Network Classifiers.- 3. Support Vector Machines.- 4. Membership Functions.- 5. Static Fuzzy Rule Generation.- 6. Clustering.- 7. Tuning of Membership Functions.- 8. Robust Pattern Classification.- 9. Dynamic Fuzzy Rule Generation.- 10. Comparison of Classifier Performance.- 11. Optimizing Features.- 12. Generation of Training and Test Data Sets.- II. Function Approximation.- 13. Introduction.- 14. Fuzzy Rule Representation and Inference.- 15. Fuzzy Rule Generation.- 16. Robust Function Approximation.- III. Appendices.- A. Conventional Classifiers.- A.1 Bayesian Classifiers.- A.2 Nearest Neighbor Classifiers.- A.2.1 Classifier Architecture.- A.2.2 Performance Evaluation.- B. Matrices.- B.1 Matrix Properties.- B.2 Least-squares Method and Singular Value Decomposition.- B.3 Covariance Matrix.- References.
Caracteristici
The unified approach for extracting fuzzy rules against different fuzzy classifier architectures A new learning paradigm for neural network classifiers based on the network synthesis principle Extensive performance comparisons including conventional classifiers