The consequences of imposing a sign constraint on the standard Hopfield architecture associative memory model, trained using perceptron like learning rules, is examined. Such learning rules have been shown to have capacity of at most half of their unconstrained versions. This paper reports experimental investigations into the consequences of constraining the sign of the network weights in terms of: capacity, training times and size of basins of attraction. It is concluded that the capacity is roughly half the theoretical maximum, the training times are much increased and that the attractor basins are significantly reduced in size
. We apply genetic algorithms to fully connected Hopfield associative memory networks. Previously, w...
Original article can be found at: http://www.informaworld.com/smpp/title~content=t713411269--Copyrig...
Attractor neural networks such as the Hopfield model can be used to model associative memory. An eff...
Abstract:- The consequences of imposing a sign constraint on the standard Hopfield architecture asso...
Biological neural networks do not allow the synapses to choose their own sign: excitatory or inhibit...
The original publication is available at www.springerlink.com . Copyright SpringerThe performance ch...
The consequences of diluting the weights of the standard Hopfield architecture associative memory mo...
Abstract. The performance characteristics of five variants of the Hopfield network are examined. Two...
Two existing high capacity training rules for the standard Hopfield architecture associative memory ...
Copyright SpringerThe consequences of two techniques for symmetrically diluting the weights of the s...
Three variants of the Hopfield network are examined, each of which is trained using a different iter...
Abstract: High capacity associative neural networks can be built from networks of perceptrons, trai...
It has been found that the performance of an associative memory model trained with the perceptron le...
In neural networks, two specific dynamical behaviours are well known: 1) Networks naturally find pat...
Hopfield neural networks are a possible basis for modelling associative memory in living organisms. ...
. We apply genetic algorithms to fully connected Hopfield associative memory networks. Previously, w...
Original article can be found at: http://www.informaworld.com/smpp/title~content=t713411269--Copyrig...
Attractor neural networks such as the Hopfield model can be used to model associative memory. An eff...
Abstract:- The consequences of imposing a sign constraint on the standard Hopfield architecture asso...
Biological neural networks do not allow the synapses to choose their own sign: excitatory or inhibit...
The original publication is available at www.springerlink.com . Copyright SpringerThe performance ch...
The consequences of diluting the weights of the standard Hopfield architecture associative memory mo...
Abstract. The performance characteristics of five variants of the Hopfield network are examined. Two...
Two existing high capacity training rules for the standard Hopfield architecture associative memory ...
Copyright SpringerThe consequences of two techniques for symmetrically diluting the weights of the s...
Three variants of the Hopfield network are examined, each of which is trained using a different iter...
Abstract: High capacity associative neural networks can be built from networks of perceptrons, trai...
It has been found that the performance of an associative memory model trained with the perceptron le...
In neural networks, two specific dynamical behaviours are well known: 1) Networks naturally find pat...
Hopfield neural networks are a possible basis for modelling associative memory in living organisms. ...
. We apply genetic algorithms to fully connected Hopfield associative memory networks. Previously, w...
Original article can be found at: http://www.informaworld.com/smpp/title~content=t713411269--Copyrig...
Attractor neural networks such as the Hopfield model can be used to model associative memory. An eff...