International audienceComputation is classically studied in terms of automata, formal languages and algorithms; yet, the relation between neural dynamics and symbolic representations and operations is still unclear in traditional eliminative connectionism. Therefore, we suggest a unique perspective on this central issue, to which we would like to refer as to transparent connectionism, by proposing accounts of how symbolic computation can be implemented in neural substrates. In this study we first introduce a new model of dynamics on a symbolic space, the versatile shift, showing that it supports the real-time simulation of a range of automata. We then show that the Gödelization of versatile shifts defines nonlinear dynamical automata, dynam...
We present a complete overview of the computational power of recurrent neural networks involved in a...
What dynamics do simple recurrent networks (SRNs) develop to represent stack-like and queue-like mem...
This work describes an approach for inferring Deterministic Context-free (DCF) Grammars in a Connect...
International audienceComputation is classically studied in terms of automata, formal languages and ...
Recent work by Siegelmann has shown that the computational power of recurrent neural networks matche...
Recursive neural networks are computational models that can be used to pro- cess structured data. In...
In this paper we show that programming languages can be translated into recurrent (analog, rational ...
"Artificial neural networks" provide an appealing model of computation. Such networks consist of an ...
Abstract—Deterministic behavior can be modeled conveniently in the framework of finite automata. We ...
AbstractUseful computation can be performed by systematically exploiting the phenomenology of nonlin...
It has been well established that Dynamical Recurrent Networks (DRNs) can act as deterministic finit...
In this thesis, we explore the interface between symbolic and dynamical system computation, with par...
Abstract. Two important issues in computational modelling in cognitive neuroscience are: first, how ...
Understanding the dynamical and computational capabilities of neural models represents an issue of c...
We present two approaches to the analysis of the relationship between a recurrent neural network (RN...
We present a complete overview of the computational power of recurrent neural networks involved in a...
What dynamics do simple recurrent networks (SRNs) develop to represent stack-like and queue-like mem...
This work describes an approach for inferring Deterministic Context-free (DCF) Grammars in a Connect...
International audienceComputation is classically studied in terms of automata, formal languages and ...
Recent work by Siegelmann has shown that the computational power of recurrent neural networks matche...
Recursive neural networks are computational models that can be used to pro- cess structured data. In...
In this paper we show that programming languages can be translated into recurrent (analog, rational ...
"Artificial neural networks" provide an appealing model of computation. Such networks consist of an ...
Abstract—Deterministic behavior can be modeled conveniently in the framework of finite automata. We ...
AbstractUseful computation can be performed by systematically exploiting the phenomenology of nonlin...
It has been well established that Dynamical Recurrent Networks (DRNs) can act as deterministic finit...
In this thesis, we explore the interface between symbolic and dynamical system computation, with par...
Abstract. Two important issues in computational modelling in cognitive neuroscience are: first, how ...
Understanding the dynamical and computational capabilities of neural models represents an issue of c...
We present two approaches to the analysis of the relationship between a recurrent neural network (RN...
We present a complete overview of the computational power of recurrent neural networks involved in a...
What dynamics do simple recurrent networks (SRNs) develop to represent stack-like and queue-like mem...
This work describes an approach for inferring Deterministic Context-free (DCF) Grammars in a Connect...