Training single-electron and single-photon stochastic physical neural networks
Tong Dou, Shiro Kumara, Josh Burns, Ethan Sigler, Parth Girdhar, David Petty, Gerard Milburn, Jo Plested, and Matt Woolley

TL;DR
This paper introduces novel electronic and photonic stochastic neural networks using quantum dots and single-photon sources, demonstrating high accuracy on MNIST despite noise.
Contribution
It proposes new physical implementations of stochastic neurons and explores training strategies for effective deep learning with these models.
Findings
Achieved over 97% test accuracy on MNIST with few trials per layer.
High accuracy maintained despite significant noise and model uncertainty.
Compared different training strategies, showing benefits of empirical outputs in backward pass.
Abstract
The computational demands of deep learning motivate the investigation of alternative approaches to computation. One alternative is physical neural networks~(PNNs), in which learning and inference are performed directly via physical processes. Stochastic PNNs arise when the underlying neurons are realized by the dynamics of a stochastic activation switch. Here we propose novel electronic and photonic stochastic neurons. The electronic realization is implemented by single-electron tunneling through a quantum dot. The photonic realization is implemented via a single-photon source driving one of two modes coupled via a controllable beam-splitter-like interaction. In the electronic case, the charge state of the quantum dot forms the basis for the stochastic neuron, whereas in the photonic case the occupation of the undriven mode serves as the basis for the stochastic neuron. Training of…
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