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Molter et al., 2007 - Google Patents

The road to chaos by time-asymmetric hebbian learning in recurrent neural networks

Molter et al., 2007

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Document ID
7323874346753957399
Author
Molter C
Salihoglu U
Bersini H
Publication year
Publication venue
Neural computation

External Links

Snippet

This letter aims at studying the impact of iterative Hebbian learning algorithms on the recurrent neural network's underlying dynamics. First, an iterative supervised learning algorithm is discussed. An essential improvement of this algorithm consists of indexing the …
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Classifications

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