Turing Computation with Recurrent Artificial Neural Networks

11/04/2015
by   Giovanni S Carmantini, et al.
0

We improve the results by Siegelmann & Sontag (1995) by providing a novel and parsimonious constructive mapping between Turing Machines and Recurrent Artificial Neural Networks, based on recent developments of Nonlinear Dynamical Automata. The architecture of the resulting R-ANNs is simple and elegant, stemming from its transparent relation with the underlying NDAs. These characteristics yield promise for developments in machine learning methods and symbolic computation with continuous time dynamical systems. A framework is provided to directly program the R-ANNs from Turing Machine descriptions, in absence of network training. At the same time, the network can potentially be trained to perform algorithmic tasks, with exciting possibilities in the integration of approaches akin to Google DeepMind's Neural Turing Machines.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/07/2016

A modular architecture for transparent computation in Recurrent Neural Networks

Computation is classically studied in terms of automata, formal language...
research
01/27/2023

Hydrodynamic and symbolic models of hypercomputation

Dynamical systems and physical models defined on idealized continuous ph...
research
08/07/2011

Evolving A-Type Artificial Neural Networks

We investigate Turing's notion of an A-type artificial neural network. W...
research
10/19/2022

Transformers Learn Shortcuts to Automata

Algorithmic reasoning requires capabilities which are most naturally und...
research
09/13/2016

Feynman Machine: The Universal Dynamical Systems Computer

Efforts at understanding the computational processes in the brain have m...
research
06/14/2016

Neural Networks and Continuous Time

The fields of neural computation and artificial neural networks have dev...
research
05/12/2021

Representation in Dynamical Systems

The brain is often called a computer and likened to a Turing machine, in...

Please sign up or login with your details

Forgot password? Click here to reset