Team:USP-UNESP-Brazil/Associative Memory/Background

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(Hopfield Associative Memory Networks)
(Hopfield Associative Memory Networks)
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The idea of this project is based on the associative memory network introduced by J.J. Hopfield in the 80’s. The structure of a Hopfield network is simple, all neurons connect among them. This brings some interesting memory properties and provide a model for understanding human memory.  
The idea of this project is based on the associative memory network introduced by J.J. Hopfield in the 80’s. The structure of a Hopfield network is simple, all neurons connect among them. This brings some interesting memory properties and provide a model for understanding human memory.  
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On this network, the system tends to converge to a pre-determined equilibrium, restoring the same pattern when exposed to variations of this pattern.
On this network, the system tends to converge to a pre-determined equilibrium, restoring the same pattern when exposed to variations of this pattern.
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"Figure 1"
"Figure 1"
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The Hopfield model as an associative memory network is a good choice because of its simplicity and robustness. The same methodology can be used to the construction of networks with other architectures, such as the called “perceptrons”. In contrast to a Hopfield network a perceptron is commonly used as a classifier and its structure is feed-forward.
The Hopfield model as an associative memory network is a good choice because of its simplicity and robustness. The same methodology can be used to the construction of networks with other architectures, such as the called “perceptrons”. In contrast to a Hopfield network a perceptron is commonly used as a classifier and its structure is feed-forward.

Revision as of 23:35, 25 September 2012