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What is Neuron Model

Encyclopedia of Artificial Intelligence
The computation of an artificial neuron, expressed as a function of its input and its weight vector and other local information.
Published in Chapter:
Feed-Forward Artificial Neural Network Basics
Lluís A. Belanche Muñoz (Universitat Politècnica de Catalunya, Spain)
Copyright: © 2009 |Pages: 8
DOI: 10.4018/978-1-59904-849-9.ch097
Abstract
The class of adaptive systems known as Artificial Neural Networks (ANN) was motivated by the amazing parallel processing capabilities of biological brains (especially the human brain). The main driving force was to re-create these abilities by constructing artificial models of the biological neuron. The power of biological neural structures stems from the enormous number of highly interconnected simple units. The simplicity comes from the fact that, once the complex electro-chemical processes are abstracted, the resulting computation turns out to be conceptually very simple. These artificial neurons have nowadays little in common with their biological counterpart in the ANN paradigm. Rather, they are primarily used as computational devices, clearly intended to problem solving: optimization, function approximation, classification, time-series prediction and others. In practice few elements are connected and their connectivity is low. This chapter is focused to supervised feed-forward networks. The field has become so vast that a complete and clearcut description of all the approaches is an enormous undertaking; we refer the reader to (Fiesler & Beale, 1997) for a comprehensive exposition.
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Learning in Feed-Forward Artificial Neural Networks II
The computation of an artificial neuron, expressed as a function of its input and its weight vector and other local information.
Full Text Chapter Download: US $37.50 Add to Cart
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