Scaling up Echo-State Networks with multiple light scattering
Emerging Technologies
2018-09-25 v3 Machine Learning
Optics
Abstract
Echo-State Networks and Reservoir Computing have been studied for more than a decade. They provide a simpler yet powerful alternative to Recurrent Neural Networks, every internal weight is fixed and only the last linear layer is trained. They involve many multiplications by dense random matrices. Very large networks are difficult to obtain, as the complexity scales quadratically both in time and memory. Here, we present a novel optical implementation of Echo-State Networks using light-scattering media and a Digital Micromirror Device. As a proof of concept, binary networks have been successfully trained to predict the chaotic Mackey-Glass time series. This new method is fast, power efficient and easily scalable to very large networks.
Cite
@article{arxiv.1609.05204,
title = {Scaling up Echo-State Networks with multiple light scattering},
author = {Jonathan Dong and Sylvain Gigan and Florent Krzakala and Gilles Wainrib},
journal= {arXiv preprint arXiv:1609.05204},
year = {2018}
}