Communications Physics (Jul 2024)

An exact mathematical description of computation with transient spatiotemporal dynamics in a complex-valued neural network

  • Roberto C. Budzinski,
  • Alexandra N. Busch,
  • Samuel Mestern,
  • Erwan Martin,
  • Luisa H. B. Liboni,
  • Federico W. Pasini,
  • Ján Mináč,
  • Todd Coleman,
  • Wataru Inoue,
  • Lyle E. Muller

DOI
https://doi.org/10.1038/s42005-024-01728-0
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 13

Abstract

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Abstract Networks throughout physics and biology leverage spatiotemporal dynamics for computation. However, the connection between structure and computation remains unclear. Here, we study a complex-valued neural network (cv-NN) with linear interactions and phase-delays. We report the cv-NN displays sophisticated spatiotemporal dynamics, which we then use, in combination with a nonlinear readout, for computation. The cv-NN can instantiate dynamics-based logic gates, encode short-term memories, and mediate secure message passing through a combination of interactions and phase-delays. The computations in this system can be fully described in an exact, closed-form mathematical expression. Finally, using direct intracellular recordings of neurons in slices from neocortex, we demonstrate that computations in the cv-NN are decodable by living biological neurons as the nonlinear readout. These results demonstrate that complex-valued linear systems can perform sophisticated computations, while also being exactly solvable. Taken together, these results open future avenues for design of highly adaptable, bio-hybrid computing systems that can interface seamlessly with other neural networks.