Using Variable Threshold to Increase Capacity in a Feedback Neural Network

03/25/2011
by   Praveen Kuruvada, et al.
0

The article presents new results on the use of variable thresholds to increase the capacity of a feedback neural network. Non-binary networks are also considered in this analysis.

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