Blending Optimal Control and Biologically Plausible Learning for Noise-Robust Physical Neural Networks

February 26, 2025 Β· Declared Dead Β· πŸ› Physical Review Letters

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Authors Satoshi Sunada, Tomoaki Niiyama, Kazutaka Kanno, Rin Nogami, AndrΓ© RΓΆhm, Takato Awano, Atsushi Uchida arXiv ID 2502.19053 Category physics.app-ph Cross-listed cs.ET, cs.LG, cs.NE Citations 4 Venue Physical Review Letters Last Checked 3 months ago
Abstract
The rapidly increasing computational demands for artificial intelligence (AI) have spurred the exploration of computing principles beyond conventional digital computers. Physical neural networks (PNNs) offer efficient neuromorphic information processing by harnessing the innate computational power of physical processes; however, training their weight parameters is computationally expensive. We propose a training approach for substantially reducing this training cost. Our training approach merges an optimal control method for continuous-time dynamical systems with a biologically plausible training method--direct feedback alignment. In addition to the reduction of training time, this approach achieves robust processing even under measurement errors and noise without requiring detailed system information. The effectiveness was numerically and experimentally verified in an optoelectronic delay system. Our approach significantly extends the range of physical systems practically usable as PNNs.
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