We study changes of coordinates that allow the embedding of ordinary differential equations describing continuous-time recurrent neural networks into differential equations describing predator-prey models - also called Lotka-Volterra systems. We transform the equations for the neural network first into quasi-monomial form (Brenig, L. (1988). Complete factorization and analytic solutions of generalized Lotka-Volterra equations. Physics Letters A, 133(7-8), 378-382), where we express the vector field of the dynamical system as a linear combination of products of powers of the variables. In practice, this transformation is possible only if the activation function is the hyperbolic tangent or the logistic sigmoid. From this quasi-monomial form,...
We consider a model of so-called hybrid recurrent neural networks composed with Boolean input and ou...
Inferring the functional shape of ecological and evolutionary processes from time-series data can be...
The two dimensional Poincare--Lindstedt method is used to obtain approximate solutions to the period...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
This work provides a framework for the approximation of a dynamic system of the form x˙=f(x)+g(x)u b...
We examine the approximating power of recurrent networks for dynamical systems through an unbounded ...
The Recurrent Neural Networks (RNNs) represent an important class of bio-inspired learning machines ...
We show that the ordinary differential equations (ODEs) of any deterministic autonomous dynamical sy...
A computational view of how perception and cognition can be modeled as dynamic patterns of transie...
A method is developed for manually constructing recurrent artificial neural networks to model the fu...
We introduce a recurrent network architecture for modelling a general class of dynamical systems
Experimental data show that biological synapses behave quite differently from the symbolic synapses ...
We wish to construct a realization theory of stable neural networks and use this theory to model the...
Neural Ordinary Differential Equations (NODE) have emerged as a novel approach to deep learning, whe...
This correspondence proves a convergence result for the Lotka-Volterra dynamical systems with symmet...
We consider a model of so-called hybrid recurrent neural networks composed with Boolean input and ou...
Inferring the functional shape of ecological and evolutionary processes from time-series data can be...
The two dimensional Poincare--Lindstedt method is used to obtain approximate solutions to the period...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
This work provides a framework for the approximation of a dynamic system of the form x˙=f(x)+g(x)u b...
We examine the approximating power of recurrent networks for dynamical systems through an unbounded ...
The Recurrent Neural Networks (RNNs) represent an important class of bio-inspired learning machines ...
We show that the ordinary differential equations (ODEs) of any deterministic autonomous dynamical sy...
A computational view of how perception and cognition can be modeled as dynamic patterns of transie...
A method is developed for manually constructing recurrent artificial neural networks to model the fu...
We introduce a recurrent network architecture for modelling a general class of dynamical systems
Experimental data show that biological synapses behave quite differently from the symbolic synapses ...
We wish to construct a realization theory of stable neural networks and use this theory to model the...
Neural Ordinary Differential Equations (NODE) have emerged as a novel approach to deep learning, whe...
This correspondence proves a convergence result for the Lotka-Volterra dynamical systems with symmet...
We consider a model of so-called hybrid recurrent neural networks composed with Boolean input and ou...
Inferring the functional shape of ecological and evolutionary processes from time-series data can be...
The two dimensional Poincare--Lindstedt method is used to obtain approximate solutions to the period...