Learning and convergence analysis of neural-type structured networks

Volume: 3, Issue: 1, Pages: 39 - 50
Published: Jan 1, 1992
Abstract
A class of feedforward neural networks, structured networks, has recently been introduced as a method for solving matrix algebra problems in an inherently parallel formulation. A convergence analysis for the training of structured networks is presented. Since the learning techniques used in structured networks are also employed in the training of neural networks, the issue of convergence is discussed not only from a numerical algebra perspective...
Paper Details
Title
Learning and convergence analysis of neural-type structured networks
Published Date
Jan 1, 1992
Volume
3
Issue
1
Pages
39 - 50
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