It has been found that the performance of an associative memory model trained with the perceptron learning rule can be improved by increasing the learning threshold. When the learning threshold increases, the range of possible values of the update threshold becomes wider and the network may perform differently with different choices of this parameter. This paper investigates the effect of varying the update threshold. The result indicates that a non-zero choice of update threshold may improve the performance of the network
Understanding the theoretical foundations of how memories are encoded and retrieved in neural popula...
Biological neural networks do not allow the synapses to choose their own sign: excitatory or inhibit...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
The original publication is available at www.springerlink.com . Copyright SpringerThe performance ch...
The consequences of imposing a sign constraint on the standard Hopfield architecture associative mem...
The consequences of diluting the weights of the standard Hopfield architecture associative memory mo...
Associative networks have long been regarded as a biologically plausible mechanism for memory storag...
Abstract. The performance characteristics of five variants of the Hopfield network are examined. Two...
Copyright SpringerThe consequences of two techniques for symmetrically diluting the weights of the s...
Authors have proposed an asymmetrical associative neural network (NN) using variable hysteresis thre...
Abstract:- The consequences of imposing a sign constraint on the standard Hopfield architecture asso...
Three variants of the Hopfield network are examined, each of which is trained using a different iter...
utoassociative memory models have been an at-tractive area for researchers lately. Their potential f...
The performance of an associate memory network depends significantly on the representation of the da...
High capacity associative memory models with dilute structured connectivity are trained using natura...
Understanding the theoretical foundations of how memories are encoded and retrieved in neural popula...
Biological neural networks do not allow the synapses to choose their own sign: excitatory or inhibit...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
The original publication is available at www.springerlink.com . Copyright SpringerThe performance ch...
The consequences of imposing a sign constraint on the standard Hopfield architecture associative mem...
The consequences of diluting the weights of the standard Hopfield architecture associative memory mo...
Associative networks have long been regarded as a biologically plausible mechanism for memory storag...
Abstract. The performance characteristics of five variants of the Hopfield network are examined. Two...
Copyright SpringerThe consequences of two techniques for symmetrically diluting the weights of the s...
Authors have proposed an asymmetrical associative neural network (NN) using variable hysteresis thre...
Abstract:- The consequences of imposing a sign constraint on the standard Hopfield architecture asso...
Three variants of the Hopfield network are examined, each of which is trained using a different iter...
utoassociative memory models have been an at-tractive area for researchers lately. Their potential f...
The performance of an associate memory network depends significantly on the representation of the da...
High capacity associative memory models with dilute structured connectivity are trained using natura...
Understanding the theoretical foundations of how memories are encoded and retrieved in neural popula...
Biological neural networks do not allow the synapses to choose their own sign: excitatory or inhibit...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...