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(Neural Computation. 2001;13:1625-1647.)
© 2001 The MIT Press


Letter

A Theory for Learning by Weight Flow on Stiefel-Grassman Manifold

Simone Fiori

Neural Networks and Adaptive System Research Group, Department of Industrial Engineering, University of Perugia, Italy

Recently we introduced the concept of neural network learning on Stiefel-Grassman manifold for multilayer perceptron–like networks. Contributions of other authors have also appeared in the scientific literature about this topic. This article presents a general theory for it and illustrates how existing theories may be explained within the general framework proposed here.




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