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The DIAMOND Model: Deep Recurrent Neural Networks for Self-Organizing Robot Control

Simón C. Smith, Richard Dharmadi, Calum Imrie, Bailu Si, J. Michael Herrmann

Year
2020
Citations
6
Access
Open access

Abstract

The proposed architecture applies the principle of predictive coding and deep learning in a brain-inspired approach to robotic sensorimotor control. It is composed of many layers each of which is a recurrent network. The component networks can be spontaneously active due to the homeokinetic learning rule, a principle that has been studied previously for the purpose of self-organized generation of behavior. We present robotic simulations that illustrate the function of the network and show evidence that deeper networks enable more complex exploratory behavior.

Keywords

Computer scienceArtificial intelligencePredictive codingDeep learningComponent (thermodynamics)Recurrent neural networkArtificial neural networkCoding (social sciences)RobotMachine learning

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