Learning and Resonance
ART1 is the first neural network model based on adaptive resonance theory of Carpenter and Grossberg.
When you have a pair of patterns such that when one of them is input to a neural network the output turns out
to be the other pattern in the pair, and if this happens consistently in both directions, then you may describe it
as resonance. We discuss in Chapter 8 bidirectional associative memories and resonance. By the time training
is completed, and learning is through, many other pattern pairs would have been presented to the network as
well. If changes in the short−term memory do not disturb or affect the long−term memory, the network shows
adaptive resonance. The ART1 model is designed to maintain it. Note that this discussion relates largely to
stability.
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