We show that cellular automata can classify data by inducing a form of dynamical phase coexistence. We use Monte Carlo methods to search for general two-dimensional deterministic automata that classify images on the basis of activity, the number of state changes that occur in a trajectory initiated from the image. When the number of timesteps of the automaton is a trainable parameter, the search scheme identifies automata that generate a population of dynamical trajectories displaying high or low activity, depending on initial conditions. Automata of this nature behave as nonlinear activation functions with an output that is effectively binary, resembling an emergent version of a spiking neuron
In this thesis, we show the ability of a deep convolutional neural network to understand the underly...
In this paper we present our preliminary results of the application of modified Cellular Automata (C...
In the qualitative classification of cellular automata (CA) rules by Wolfram [Rev. Mod. Phys. 55, 60...
. We present new tools allowing a formal classification of cellular automata, i.e. transfinite attr...
"Glider" dynamics in cellular automata (CA), where coherent configurations emerge and inte...
Cellular automata are dynamical systems in which time and space are discrete. A cellular automaton c...
Many natural processes occur over characteristic spatial and temporal scales. This paper presents to...
Abstract. Cellular automata are discrete mathematical models that have been proven useful as represe...
Computations are dynamical systems. The formal study of dynamical systems has revealed a spectrum of...
Cellular automata are a model of parallel computing. It is well known that simple cellular automata ...
We propose a Cellular Automata (CA) model in which three ubiquitous and relevant processes in nature...
International audienceCellular automata are a model of parallel computing. It is well known that sim...
Cellular automata (CA) are fully discrete dynamical systems. Space is represented by a regular latti...
Many natural processes occur over characteristic spatial and temporal scales. This paper presents to...
Abstract. A new approach of modeling for developing spatio-temporal patterns by using a probabilisti...
In this thesis, we show the ability of a deep convolutional neural network to understand the underly...
In this paper we present our preliminary results of the application of modified Cellular Automata (C...
In the qualitative classification of cellular automata (CA) rules by Wolfram [Rev. Mod. Phys. 55, 60...
. We present new tools allowing a formal classification of cellular automata, i.e. transfinite attr...
"Glider" dynamics in cellular automata (CA), where coherent configurations emerge and inte...
Cellular automata are dynamical systems in which time and space are discrete. A cellular automaton c...
Many natural processes occur over characteristic spatial and temporal scales. This paper presents to...
Abstract. Cellular automata are discrete mathematical models that have been proven useful as represe...
Computations are dynamical systems. The formal study of dynamical systems has revealed a spectrum of...
Cellular automata are a model of parallel computing. It is well known that simple cellular automata ...
We propose a Cellular Automata (CA) model in which three ubiquitous and relevant processes in nature...
International audienceCellular automata are a model of parallel computing. It is well known that sim...
Cellular automata (CA) are fully discrete dynamical systems. Space is represented by a regular latti...
Many natural processes occur over characteristic spatial and temporal scales. This paper presents to...
Abstract. A new approach of modeling for developing spatio-temporal patterns by using a probabilisti...
In this thesis, we show the ability of a deep convolutional neural network to understand the underly...
In this paper we present our preliminary results of the application of modified Cellular Automata (C...
In the qualitative classification of cellular automata (CA) rules by Wolfram [Rev. Mod. Phys. 55, 60...