Most analytical results concerning the long-time behaviour of associative memory networks have been obtained by using binary elementary units. The use of alternative types of neuron-like processing elements is considered as a way of testing the generality of those results and of approaching biological realism. In particular, threshold-linear units are proposed as appropriate in models designed to reproduce low firing rates, in which long-time stability does not rely on single unit saturation. Such units are simple enough to allow detailed analytical understanding of the properties of the network. This is demonstrated by analysing the attractor states of a network operating at low rates. It is shown that while the interesting retrieval behav...
Elementary units characterized by a threshold-linear (graded) response have been argued to model sin...
Elementary units characterized by a threshold-linear (graded) response have been argued to model sin...
Abstract—This brief discusses a class of discrete-time recurrent neural networks with complex-valued...
Most analytical results concerning the long-time behaviour of associative memory networks have been ...
Abstract—The additive recurrent network structure of linear threshold neurons represents a class of ...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
Associative networks have long been regarded as a biologically plausible mechanism for memory storag...
A general mean-field theory is presented for an attractor neural network in which each elementary un...
A general mean-field theory is presented for an attractor neural network in which each elementary un...
We describe a modified attractor neural network in which neuronal dynamics takes place on a time sca...
We consider the multitasking associative network in the low-storage limit and we study its phase dia...
We study analytically the effect of metrically structured connectivity on the behavior of autoassoci...
We study analytically the effect of metrically structured connectivity on the behavior of autoassoci...
We consider the multitasking associative network in the low-storage limit and we study its phase dia...
Elementary units characterized by a threshold-linear (graded) response have been argued to model sin...
Elementary units characterized by a threshold-linear (graded) response have been argued to model sin...
Abstract—This brief discusses a class of discrete-time recurrent neural networks with complex-valued...
Most analytical results concerning the long-time behaviour of associative memory networks have been ...
Abstract—The additive recurrent network structure of linear threshold neurons represents a class of ...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
Associative networks have long been regarded as a biologically plausible mechanism for memory storag...
A general mean-field theory is presented for an attractor neural network in which each elementary un...
A general mean-field theory is presented for an attractor neural network in which each elementary un...
We describe a modified attractor neural network in which neuronal dynamics takes place on a time sca...
We consider the multitasking associative network in the low-storage limit and we study its phase dia...
We study analytically the effect of metrically structured connectivity on the behavior of autoassoci...
We study analytically the effect of metrically structured connectivity on the behavior of autoassoci...
We consider the multitasking associative network in the low-storage limit and we study its phase dia...
Elementary units characterized by a threshold-linear (graded) response have been argued to model sin...
Elementary units characterized by a threshold-linear (graded) response have been argued to model sin...
Abstract—This brief discusses a class of discrete-time recurrent neural networks with complex-valued...