Conventional model-based data processing methods are computationally expensive and require experts knowledge for the modelling of a system; neural networks provide a model-free, adaptive, parallel-processing solution. Neural Networks in a Softcomputing Framework presents a thorough review of the mos
Neural Networks in a Softcomputing Framework
β Scribed by K. -L. Du PhD, M. N. S. Swamy PhD, D.Sc (Eng) (auth.)
- Publisher
- Springer-Verlag London
- Year
- 2006
- Tongue
- English
- Leaves
- 609
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Conventional model-based data processing methods are computationally expensive and require expertsβ knowledge for the modelling of a system; neural networks provide a model-free, adaptive, parallel-processing solution. Neural Networks in a Softcomputing Framework presents a thorough review of the most popular neural-network methods and their associated techniques.
This concise but comprehensive textbook provides a powerful and universal paradigm for information processing. Each chapter provides state-of-the-art descriptions of the important major research results of the respective neural-network methods. A range of relevant computational intelligence topics, such as fuzzy logic and evolutionary algorithms, are introduced. These are powerful tools for neural-network learning. Array signal processing problems are discussed in order to illustrate the applications of each neural-network model.
Neural Networks in a Softcomputing Framework is an ideal textbook for graduate students and researchers in this field because in addition to grasping the fundamentals, they can discover the most recent advances in each of the popular models. The systematic survey of each neural-network model and the exhaustive list of references will enable researchers and students to find suitable topics for future research. The important algorithms outlined also make this textbook a valuable reference for scientists and practitioners working in pattern recognition, signal processing, speech and image processing, data analysis and artificial intelligence.
β¦ Table of Contents
Introduction....Pages 1-26
Fundamentals of Machine Learning and Softcomputing....Pages 27-56
Multilayer Perceptrons....Pages 57-139
Hopfield Networks and Boltzmann Machines....Pages 141-186
Competitive Learning and Clustering....Pages 187-249
Radial Basis Function Networks....Pages 251-294
Principal Component Analysis Networks....Pages 295-351
Fuzzy Logic and Neurofuzzy Systems....Pages 353-404
Evolutionary Algorithms and Evolving Neural Networks....Pages 405-456
Discussion and Outlook....Pages 457-470
β¦ Subjects
Numerical and Computational Methods in Engineering; Complexity; Computation by Abstract Devices; Artificial Intelligence (incl. Robotics); Signal, Image and Speech Processing; Pattern Recognition
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