English

Deep Reinforcement Learning for Neural Control

Neurons and Cognition 2020-06-15 v1 Artificial Intelligence Machine Learning Systems and Control Systems and Control

Abstract

We present a novel methodology for control of neural circuits based on deep reinforcement learning. Our approach achieves aimed behavior by generating external continuous stimulation of existing neural circuits (neuromodulation control) or modulations of neural circuits architecture (connectome control). Both forms of control are challenging due to nonlinear and recurrent complexity of neural activity. To infer candidate control policies, our approach maps neural circuits and their connectome into a grid-world like setting and infers the actions needed to achieve aimed behavior. The actions are inferred by adaptation of deep Q-learning methods known for their robust performance in navigating grid-worlds. We apply our approach to the model of \textit{C. elegans} which simulates the full somatic nervous system with muscles and body. Our framework successfully infers neuropeptidic currents and synaptic architectures for control of chemotaxis. Our findings are consistent with in vivo measurements and provide additional insights into neural control of chemotaxis. We further demonstrate the generality and scalability of our methods by inferring chemotactic neural circuits from scratch.

Keywords

Cite

@article{arxiv.2006.07352,
  title  = {Deep Reinforcement Learning for Neural Control},
  author = {Jimin Kim and Eli Shlizerman},
  journal= {arXiv preprint arXiv:2006.07352},
  year   = {2020}
}

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Please see the associated Video at: https://youtu.be/ixsUMfb9m_U

R2 v1 2026-06-23T16:17:06.057Z