We wish to construct a realization theory of stable neural networks and use this theory to model the variety of stable dynamics apparent in natural data. Such a theory should have numerous applications to constructing specific artificial neural networks with desired dynamical behavior. The networks used in this theory should have well understood dynamics yet be as diverse as possible to capture natural diversity. In this article, I describe a parameterized family of higher order, gradient-like neural networks which have known arbitrary equilibria with unstable manifolds of known specified dimension. Moreover, any system with hyperbolic dynamics is conjugate to one of these systems in a neighborhood of the equilibrium points. Prior ...
A transform is introduced that maps discrete neural network dynamics to almost everywhere topologica...
The dynamical behaviour of continuous time recurrent neural network models is studied with emphasis ...
In the paper, a neural network model based on three McCulloch–Pitts adder neurons is considered. Pre...
In this paper, two methods for constructing systems of ordinary differential equations realizing any...
This report presents a formalism that enables the dynamics of a broad class of neural networks to be...
UNM Technical Report No. EECE93 001This report presents a formalism that enables the dynamics of a b...
A large number of current machine learning methods rely upon deep neural networks. Yet, viewing neur...
The Recurrent Neural Networks (RNNs) represent an important class of bio-inspired learning machines ...
In the present paper we survey and utilize results from the qualitative theory of large scale interc...
There has been a considerable amount of interest in the application of neural networks to informatio...
The author analyzes the number, location, and stability behavior of the equilibria of arbitrary nonl...
The paper introduces a new approach to analyze the stability of neural network models without using ...
AbstractThe stability is studied of a class of nonlinear dynamical systems which possess many nonlin...
The stability is studied of a class of nonlinear dynamical systems which possess many nonlinearities...
This paper is devoted to studying both the global and local stability of dynamical neural networks. ...
A transform is introduced that maps discrete neural network dynamics to almost everywhere topologica...
The dynamical behaviour of continuous time recurrent neural network models is studied with emphasis ...
In the paper, a neural network model based on three McCulloch–Pitts adder neurons is considered. Pre...
In this paper, two methods for constructing systems of ordinary differential equations realizing any...
This report presents a formalism that enables the dynamics of a broad class of neural networks to be...
UNM Technical Report No. EECE93 001This report presents a formalism that enables the dynamics of a b...
A large number of current machine learning methods rely upon deep neural networks. Yet, viewing neur...
The Recurrent Neural Networks (RNNs) represent an important class of bio-inspired learning machines ...
In the present paper we survey and utilize results from the qualitative theory of large scale interc...
There has been a considerable amount of interest in the application of neural networks to informatio...
The author analyzes the number, location, and stability behavior of the equilibria of arbitrary nonl...
The paper introduces a new approach to analyze the stability of neural network models without using ...
AbstractThe stability is studied of a class of nonlinear dynamical systems which possess many nonlin...
The stability is studied of a class of nonlinear dynamical systems which possess many nonlinearities...
This paper is devoted to studying both the global and local stability of dynamical neural networks. ...
A transform is introduced that maps discrete neural network dynamics to almost everywhere topologica...
The dynamical behaviour of continuous time recurrent neural network models is studied with emphasis ...
In the paper, a neural network model based on three McCulloch–Pitts adder neurons is considered. Pre...