
Pattern Classification
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.
- Alaotsikko
- Neuro-fuzzy Methods and Their Comparison
- Kirjailija
- Shigeo Abe
- Painos
- 2001 ed.
- ISBN
- 9781852333522
- Kieli
- englanti
- Paino
- 446 grammaa
- Julkaisupäivä
- 11.12.2000
- Kustantaja
- Springer London Ltd
- Sivumäärä
- 327