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On-chip bacterial foraging training in silicon photonic circuits for projection-enabled nonlinear classification

Engineering and Technology

On-chip bacterial foraging training in silicon photonic circuits for projection-enabled nonlinear classification

G. Cong, N. Yamamoto, et al.

Explore the innovative projection-based classification principle that enables on-chip training of photonic devices for machine learning, demonstrated by authors Guangwei Cong, Noritsugu Yamamoto, Takashi Inoue, Yuriko Maegami, Morifumi Ohno, Shota Kita, Shu Namiki, and Koji Yamada. This research achieves impressive accuracy in various Boolean logics and Iris classification, showing unparalleled scalability without traditional activation functions.

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~3 min • Beginner • English
Abstract
On-chip training remains a challenging issue for photonic devices to implement machine learning algorithms. Most demonstrations only implement inference in photonics for offline-trained neural network models. On the other hand, artificial neural networks are one of the most deployed algorithms, while other machine learning algorithms such as supporting vector machine (SVM) remain unexplored in photonics. Here, inspired by SVM, we propose to implement projection-based classification principle by constructing nonlinear mapping functions in silicon photonic circuits and experimentally demonstrate on-chip bacterial foraging training for this principle to realize single Boolean logics, combinational Boolean logics, and Iris classification with ~96.7 – 98.3 per cent accuracy. This approach can offer comparable performances to artificial neural networks for various benchmarks even with smaller scales and without leveraging traditional activation functions, showing scalability advantage. Natural-intelligence-inspired bacterial foraging offers efficient and robust on-chip training, and this work paves a way for photonic circuits to perform nonlinear classification.
Publisher
Nature Communications
Published On
Jun 30, 2022
Authors
Guangwei Cong, Noritsugu Yamamoto, Takashi Inoue, Yuriko Maegami, Morifumi Ohno, Shota Kita, Shu Namiki, Koji Yamada
Tags
on-chip training
photonic devices
machine learning
nonlinear classification
bacterial foraging optimization
Boolean logic
Iris classification
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