Communications Physics (Dec 2024)

Reservoir direct feedback alignment: deep learning by physical dynamics

  • Mitsumasa Nakajima,
  • Yongbo Zhang,
  • Katsuma Inoue,
  • Yasuo Kuniyoshi,
  • Toshikazu Hashimoto,
  • Kohei Nakajima

DOI
https://doi.org/10.1038/s42005-024-01895-0
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 10

Abstract

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Abstract The rapid advancement of deep learning has motivated various analog computing devices for energy-efficient non-von Neuman computing. While recent demonstrations have shown their excellent performance, particularly in the inference phase, computation of training using analog hardware is still challenging due to the complexity of training algorithms such as backpropagation. Here, we present an alternative training algorithm that combines two emerging concepts: reservoir computing (RC) and biologically inspired training. Instead of backpropagated errors, the proposed method computes the error projection using nonlinear dynamics (i.e., reservoir), which is highly suitable for physical implementation because it only requires a single passive dynamical system with a smaller number of nodes. Numerical simulation with Lyapunov analysis showed some interesting features of our proposed algorithm itself: the reservoir basically should be selected to satisfy the echo-state-property; but even chaotic dynamics can be used for the training when its time scale is below the Lyapunov time; and the performance is maximized near the edge of chaos, which is similar to standard RC framework. Furthermore, we experimentally demonstrated the training of feedforward neural networks by using an optoelectronic reservoir computer. Our approach provides an alternative solution for deep learning computation and its physical acceleration.