A transform is introduced that maps discrete neural network dynamics to almost everywhere topologically conjugate dynamical systems on the unit interval. In many cases this correspondence gives rise to continuous conjugates, in which case the tranform preserves entropy. The transform also allows transfer of many dynamical properties of continuous systems to a large class of infinite discrete neural networks. For instance, it is proved that the network dynamics of very simple classes of neural networks, even with highly symmetric weights and architectures, have chaotic regions of evolution (in the sense of existence of scrambled sets and configurations of arbitrarily large periods). These results raise the possibility of fully modeling paral...
We investigate analog neural networks. They have continuous state variables that depend continuously...
We prove that except possibly for small exceptional sets, discrete-time analog neural nets are globa...
Motivated by mathematical modeling, analog implementation and distributed simulation of neural netwo...
A transform is introduced that maps discrete neural network dynamics to almost everywhere topologica...
In this paper, the complex dynamical behaviors in a discrete neural network loop with self-feedback ...
The discrete-time dynamics of small neural networks is studied empirically, with emphasis laid on no...
We consider a model of neural and gene networks where the nonlinearities in the system of differenti...
We examine the approximating power of recurrent networks for dynamical systems through an unbounded ...
We wish to construct a realization theory of stable neural networks and use this theory to model the...
Abstract—Chaotic neural networks have received a great deal of attention these last years. In this p...
Abstract — This paper aims to theoretically prove that both transiently chaotic neural networks (TCN...
Abstract. This paper proves a global stability result for a class of nonlinear discrete-time systems...
A fundamental challenge for any general theory of neural circuits is how to characterize the structu...
On account of their role played in the fundamental biological rhythms and by considering their pote...
summary:The dynamical behaviour of a continuous time recurrent neural network model with a special w...
We investigate analog neural networks. They have continuous state variables that depend continuously...
We prove that except possibly for small exceptional sets, discrete-time analog neural nets are globa...
Motivated by mathematical modeling, analog implementation and distributed simulation of neural netwo...
A transform is introduced that maps discrete neural network dynamics to almost everywhere topologica...
In this paper, the complex dynamical behaviors in a discrete neural network loop with self-feedback ...
The discrete-time dynamics of small neural networks is studied empirically, with emphasis laid on no...
We consider a model of neural and gene networks where the nonlinearities in the system of differenti...
We examine the approximating power of recurrent networks for dynamical systems through an unbounded ...
We wish to construct a realization theory of stable neural networks and use this theory to model the...
Abstract—Chaotic neural networks have received a great deal of attention these last years. In this p...
Abstract — This paper aims to theoretically prove that both transiently chaotic neural networks (TCN...
Abstract. This paper proves a global stability result for a class of nonlinear discrete-time systems...
A fundamental challenge for any general theory of neural circuits is how to characterize the structu...
On account of their role played in the fundamental biological rhythms and by considering their pote...
summary:The dynamical behaviour of a continuous time recurrent neural network model with a special w...
We investigate analog neural networks. They have continuous state variables that depend continuously...
We prove that except possibly for small exceptional sets, discrete-time analog neural nets are globa...
Motivated by mathematical modeling, analog implementation and distributed simulation of neural netwo...