Expand this Topic clickable element to expand a topic
Skip to content
Optica Publishing Group

Training photonic extreme learning machines using feedback alignment

Not Accessible

Your library or personal account may give you access

Abstract

Photonic extreme learning machines and reservoir computers enhance machine learning by efficiently mapping data to a high dimensional space. We demonstrate training the input mapping of such approaches using feedback alignment improves performance.

© 2021 The Author(s)

PDF Article  |   Presentation Video
More Like This
Photonic Crystals Band Diagrams Computation by Using Extreme Learning Machine

Adriano da Silva Ferreira, Gilliard Nardel Malheiros-Silveira, and Hugo Enrique Hernandez-Figueroa
JW4A.94 Frontiers in Optics (FiO) 2018

Silicon Photonics for Machine Learning: Training and Inference

B. J. Shastri, M. J. Filipovich, Z. Guo, P. R. Prucnal, C. Huang, A. N. Tait, S. Shekhar, and V. J. Sorger
Tu4G.1 European Conference and Exhibition on Optical Communication (ECOC) 2022

Unified Photonic Implementation of Reservoir Computing and Extreme Learning Machines based on a Single Time-delayed Node

S. Ortín, D. San-Martín, L. Pesquera, M. C. Soriano, D. Brunner, I. Fischer, C. R. Mirasso, and J. M. Gutiérrez
EF_P_11 European Quantum Electronics Conference (EQEC) 2015

Presentation Video

Presentation video access is available to:

  1. Optica Publishing Group subscribers
  2. Technical meeting attendees
  3. Optica members who wish to use one of their free downloads. Please download the article first. After downloading, please refresh this page.

Contact your librarian or system administrator
or
Log in to access Optica Member Subscription or free downloads


More Like This
Photonic Crystals Band Diagrams Computation by Using Extreme Learning Machine

Adriano da Silva Ferreira, Gilliard Nardel Malheiros-Silveira, and Hugo Enrique Hernandez-Figueroa
JW4A.94 Frontiers in Optics (FiO) 2018

Silicon Photonics for Machine Learning: Training and Inference

B. J. Shastri, M. J. Filipovich, Z. Guo, P. R. Prucnal, C. Huang, A. N. Tait, S. Shekhar, and V. J. Sorger
Tu4G.1 European Conference and Exhibition on Optical Communication (ECOC) 2022

Unified Photonic Implementation of Reservoir Computing and Extreme Learning Machines based on a Single Time-delayed Node

S. Ortín, D. San-Martín, L. Pesquera, M. C. Soriano, D. Brunner, I. Fischer, C. R. Mirasso, and J. M. Gutiérrez
EF_P_11 European Quantum Electronics Conference (EQEC) 2015

Machine Learning Training in Silicon Photonic Circuits

Guangwei Cong, Noritsugu Yamamoto, Takashi Inoue, Yuriko Maegami, Morifumi Ohno, Shota Kita, Shu Namiki, and Koji Yamada
FM6D.2 Frontiers in Optics (FiO) 2023

Computing Band Structures of Randomly-Generated 2D Photonic Crystals with Extreme Learning Machines

Adriano da Silva Ferreira, Gilliard Nardel Malheiros-Silveira, and Hugo Enrique Hernández-Figueroa
JTu7D.3 Frontiers in Optics (FiO) 2020

Select as filters


Select Topics Cancel
© Copyright 2024 | Optica Publishing Group. All rights reserved, including rights for text and data mining and training of artificial technologies or similar technologies.