summary:Biological systems are able to switch their neural systems into inhibitory states and it is therefore important to build mathematical models that can explain such phenomena. If we interpret such inhibitory modes as `positive' or `negative' steady states of neural networks, then we will need to find the corresponding fixed points. This paper shows positive fixed point theorems for a particular class of cellular neural networks whose neuron units are placed at the vertices of a regular polygon. The derivation is based on elementary analysis. However, it is hoped that our easy fixed point theorems have potential applications in exploring stationary states of similar biological network models
Both the analog Hopfield network [1] and the cellular neural network [2], [3] are special cases of t...
As with probability theory, uncertainty theory has been developed, in recent years, to portray indet...
Previous explanations of computations performed by recurrent networks have focused on symmetrically ...
summary:Biological systems are able to switch their neural systems into inhibitory states and it is ...
Tyt. z nagłówka.Bibliogr. s. 359.Dostępny również w formie drukowanej.ABSTRACT: The steady state sol...
A typical neuron cell is characterized by the state variable and the neuron output, which is obtaine...
We firstly employ the fixed point theory to study the stability of cellular neural networks without ...
Because the dynamics of a neural network with symmetric interactions is similar to a gradient descen...
This brief studies the complete stability of neural networks with nonmonotonic piecewise linear acti...
Ascribing computational principles to neural feedback circuits is an important problem in theoretica...
We consider the existence of fixed points of nonnegative neural networks, i.e., neural networks that...
Previous explanations of computations performed by recurrent networks have focused on symmetrically ...
In this paper; we obtain a new sufficient condition for the existence of a stable equilibrium point ...
The number of equilibrium points of a dynamical system dictates important qualitative properties suc...
Motivation: Feedback circuits are important motifs in biological networks and part of virtually all ...
Both the analog Hopfield network [1] and the cellular neural network [2], [3] are special cases of t...
As with probability theory, uncertainty theory has been developed, in recent years, to portray indet...
Previous explanations of computations performed by recurrent networks have focused on symmetrically ...
summary:Biological systems are able to switch their neural systems into inhibitory states and it is ...
Tyt. z nagłówka.Bibliogr. s. 359.Dostępny również w formie drukowanej.ABSTRACT: The steady state sol...
A typical neuron cell is characterized by the state variable and the neuron output, which is obtaine...
We firstly employ the fixed point theory to study the stability of cellular neural networks without ...
Because the dynamics of a neural network with symmetric interactions is similar to a gradient descen...
This brief studies the complete stability of neural networks with nonmonotonic piecewise linear acti...
Ascribing computational principles to neural feedback circuits is an important problem in theoretica...
We consider the existence of fixed points of nonnegative neural networks, i.e., neural networks that...
Previous explanations of computations performed by recurrent networks have focused on symmetrically ...
In this paper; we obtain a new sufficient condition for the existence of a stable equilibrium point ...
The number of equilibrium points of a dynamical system dictates important qualitative properties suc...
Motivation: Feedback circuits are important motifs in biological networks and part of virtually all ...
Both the analog Hopfield network [1] and the cellular neural network [2], [3] are special cases of t...
As with probability theory, uncertainty theory has been developed, in recent years, to portray indet...
Previous explanations of computations performed by recurrent networks have focused on symmetrically ...