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Feed-Forward Neural Networks: Vector Decomposition Analysis, Modelling and Analog Implementation Softcover reprint of the original 1st ed. 1995 [Pehme köide]

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Feed-Forward Neural Networks: Vector Decomposition Analysis, Modelling and Analog Implementation presents a novel method for the mathematical analysis of neural networks that learn according to the back-propagation algorithm. The book also discusses some other recent alternative algorithms for hardware implemented perception-like neural networks. The method permits a simple analysis of the learning behaviour of neural networks, allowing specifications for their building blocks to be readily obtained.
Starting with the derivation of a specification and ending with its hardware implementation, analog hard-wired, feed-forward neural networks with on-chip back-propagation learning are designed in their entirety. On-chip learning is necessary in circumstances where fixed weight configurations cannot be used. It is also useful for the elimination of most mis-matches and parameter tolerances that occur in hard-wired neural network chips.
Fully analog neural networks have several advantages over other implementations: low chip area, low power consumption, and high speed operation.
Feed-Forward Neural Networks is an excellent source of reference and may be used as a text for advanced courses.

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Springer Book Archives
1 Introduction.- 2 The Vector Decomposition Method.- 3 Dynamics of
Single Layer Nets.- 4 Unipolar Input Signals in Single-Layer Feed-Forward
Neural Networks.- 5 Cross-talk in Single-Layer Feed-Forward Neural Networks.-
6 Precision Requirements for Analog Weight Adaptation Circuitry for
Single-Layer Nets.- 7 Discretization of Weight Adaptations in Single-Layer
Nets.- 8 Learning Behavior and Temporary Minima of Two-Layer Neural
Networks.- 9 Biases and Unipolar Input signals for Two-Layer Neural
Networks.- 10 Cost Functions for Two-Layer Neural Networks.- 11 Some issues
for f (x).- 12 Feed-forward hardware.- 13 Analog weight adaptation
hardware.- 14 Conclusions.- Nomenclature.