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Complex-Valued Neural Networks with Multi-Valued Neurons
Details
Complex-valued neural networks have higher functionality, learn faster and generalize better than their real-valued counterparts. This book on the multi-valued neuron (MVN) and MVN-based neural networks covers MVN theory, learning, and applications.
Complex-Valued Neural Networks have higher functionality, learn faster and generalize better than their real-valued counterparts.
This book is devoted to the Multi-Valued Neuron (MVN) and MVN-based neural networks. It contains a comprehensive observation of MVN theory, its learning, and applications. MVN is a complex-valued neuron whose inputs and output are located on the unit circle. Its activation function is a function only of argument (phase) of the weighted sum. MVN derivative-free learning is based on the error-correction rule. A single MVN can learn those input/output mappings that are non-linearly separable in the real domain. Such classical non-linearly separable problems as XOR and Parity n are the simplest that can be learned by a single MVN. Another important advantage of MVN is a proper treatment of the phase information.
These properties of MVN become even more remarkable when this neuron is used as a basic one in neural networks. The Multilayer Neural Network based on Multi-Valued Neurons (MLMVN) is an MVN-based feedforward neural network. Its backpropagation learning algorithm is derivative-free and based on the error-correction rule. It does not suffer from the local minima phenomenon. MLMVN outperforms many other machine learning techniques in terms of learning speed, network complexity and generalization capability when solving both benchmark and real-world classification and prediction problems. Another interesting application of MVN is its use as a basic neuron in multi-state associative memories.
The book is addressed to those readers who develop theoretical fundamentals of neural networks and use neural networks for solving various real-world problems. It should also be very suitable for Ph.D. and graduate students pursuing their degrees in computational intelligence.
Cutting-edge research on Complex-Valued Networks with Multi-Valued Neurons Written by leading experts in this field State-of-the-Art book
Inhalt
Why We Need Complex-Valued Neural Networks?.- The Multi-Valued Neuron.- MVN Learning.- Multilayer Feedforward Neural Network based on Multi-Valued Neurons (MLMVN).- Multi-Valued Neuron with a Periodic Activation Function.- Applications of MVN and MLMVN.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783662506318
- Genre Technology Encyclopedias
- Auflage Softcover reprint of the original 1st edition 2011
- Lesemotiv Verstehen
- Anzahl Seiten 280
- Herausgeber Springer Berlin Heidelberg
- Größe H235mm x B155mm x T16mm
- Jahr 2016
- EAN 9783662506318
- Format Kartonierter Einband
- ISBN 3662506319
- Veröffentlichung 23.08.2016
- Titel Complex-Valued Neural Networks with Multi-Valued Neurons
- Autor Igor Aizenberg
- Untertitel Studies in Computational Intelligence 353
- Gewicht 429g
- Sprache Englisch