Saved in:
Bibliographic Details
Main Authors: Andrisani, Andrea, Vessio, Gennaro, Sgobba, Fabrizio, Di Lena, Francesco, Santamaria, Luigi Amato, Castellano, Giovanna
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.01784
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910061584973824
author Andrisani, Andrea
Vessio, Gennaro
Sgobba, Fabrizio
Di Lena, Francesco
Santamaria, Luigi Amato
Castellano, Giovanna
author_facet Andrisani, Andrea
Vessio, Gennaro
Sgobba, Fabrizio
Di Lena, Francesco
Santamaria, Luigi Amato
Castellano, Giovanna
contents Quantum optical neurons (QONs) are emerging as promising computational units that leverage photonic interference to perform neural operations in an energy-efficient and physically grounded manner. Building on recent theoretical proposals, we introduce a family of QON architectures based on Hong-Ou-Mandel (HOM) and Mach-Zehnder (MZ) interferometers, incorporating different photon modulation strategies -- phase, amplitude, and intensity. These physical setups yield distinct pre-activation functions, which we implement as fully differentiable software modules. We evaluate these QONs both in isolation and as building blocks of multilayer networks, training them on binary and multiclass image classification tasks using the MNIST and FashionMNIST datasets. Each experiment is repeated over five independent runs and assessed under both ideal and non-ideal conditions to measure accuracy, convergence, and robustness. Across settings, MZ-based neurons exhibit consistently stable behavior -- including under noise -- while HOM amplitude modulation performs competitively in deeper architectures, in several cases approaching classical performance. In contrast, phase- and intensity-modulated HOM-based variants show reduced stability and greater sensitivity to perturbations. These results highlight the potential of QONs as efficient and scalable components for future quantum-inspired neural architectures and hybrid photonic-electronic systems. The code is publicly available at https://github.com/gvessio/quantum-optical-neurons.
format Preprint
id arxiv_https___arxiv_org_abs_2509_01784
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Modeling and benchmarking quantum optical neurons for efficient neural computation
Andrisani, Andrea
Vessio, Gennaro
Sgobba, Fabrizio
Di Lena, Francesco
Santamaria, Luigi Amato
Castellano, Giovanna
Optics
Machine Learning
Quantum optical neurons (QONs) are emerging as promising computational units that leverage photonic interference to perform neural operations in an energy-efficient and physically grounded manner. Building on recent theoretical proposals, we introduce a family of QON architectures based on Hong-Ou-Mandel (HOM) and Mach-Zehnder (MZ) interferometers, incorporating different photon modulation strategies -- phase, amplitude, and intensity. These physical setups yield distinct pre-activation functions, which we implement as fully differentiable software modules. We evaluate these QONs both in isolation and as building blocks of multilayer networks, training them on binary and multiclass image classification tasks using the MNIST and FashionMNIST datasets. Each experiment is repeated over five independent runs and assessed under both ideal and non-ideal conditions to measure accuracy, convergence, and robustness. Across settings, MZ-based neurons exhibit consistently stable behavior -- including under noise -- while HOM amplitude modulation performs competitively in deeper architectures, in several cases approaching classical performance. In contrast, phase- and intensity-modulated HOM-based variants show reduced stability and greater sensitivity to perturbations. These results highlight the potential of QONs as efficient and scalable components for future quantum-inspired neural architectures and hybrid photonic-electronic systems. The code is publicly available at https://github.com/gvessio/quantum-optical-neurons.
title Modeling and benchmarking quantum optical neurons for efficient neural computation
topic Optics
Machine Learning
url https://arxiv.org/abs/2509.01784