The 69th JSAP Spring Meeting 2022

Presentation information

Oral presentation

FS Focused Session "AI Electronics" » FS.1 Focused Session "AI Electronics"

[23p-E102-1~14] FS.1 Focused Session "AI Electronics"

Wed. Mar 23, 2022 1:30 PM - 5:15 PM E102 (E102)

Hirofumi Tanaka(Kyushu Inst. of Tech.), Seiya Kasai(Hokkaido Univ.)

4:45 PM - 5:00 PM

[23p-E102-13] Physical Deep Learning with Augmented Direct Feedback Alignment and Its Optoelectronic Implementation

〇Mitsumasa Nakajima1, Katsuma Inoue2, Kenji Tanaka, Yasuo Kuniyoshi2, Toshikazu Hashimoto1, Kohei Nakajima2 (1.NTT Device Technology Labs., 2.Tokyo Univ.)

Keywords:Reservoir computing, Machine learning, Neural network

The ever-growing demand for further advances in artificial intelligence motivated research on unconventional computation based on analog physical devices. While such computation devices mimic brain-inspired analog information processing, learning procedures still relies on methods optimized for digital processing such as backpropagation. Here, we present physical deep learning by extending a biologically plausible training algorithm called direct feedback alignment. As the proposed method is based on random projection with arbitrary nonlinear activation, we can train a physical neural network without knowledge about the physical system. In addition, we can emulate and accelerate the computation for this training on a simple and scalable physical system. We demonstrate the proof-of-concept using a hierarchically connected optoelectronic recurrent neural network called deep reservoir computer.