JARINGAN PEMBELAJARAN TIRUAN YANG DITURUNKAN DARI SISTEM SYARAF BIOLOGIS DENGAN MENGGUNAKAN MODEL HOPFIELD (BAGIAN-1)
Abstract
An artificial neural network is described that employs novel neuronal elements based
on some recently revealed fundamental properties of biological neuronal networks. The
dynamically stable associative learning (Dystal) network learns both correlations and
anticorrelations by associating patterns through local interactions manifest only at the
input of neuronal elements. The network can be configured to either classify or restore
patterns simply by changing the number of output units. Dystal exhibits some desireable
properties : performance of the network is stable with respect to network parameters
over wide ranges of their values and over the size of the input fields. Neither global nor
global feedback connections are required during learning. So that, the network is
particularly suitable for hardware implementation. The training pattern may be noisy
and need not be orthogonal. A very large number of pattern can be stored, network
architecture is not restricted to multi-layer feed-forward or any other specific structure.
For a known set of input patterns, the network weights can be computed a priori, in
closed form, and computational effort scales linearly with the number of conections.
These properties are described by Hopfield Neural Network.
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