Solving classification tasks by a receptron based on nonlinear optical speckle fields
B. Paroli, G. Martini, M.A.C. Potenza, M. Siano, M. Mirigliano, P., Milani

TL;DR
This paper introduces the receptron, a nonlinear optical speckle field-based classifier that surpasses traditional perceptrons, enabling efficient, hardware-based neuromorphic computing for complex Boolean functions without extensive training.
Contribution
It proposes a generalized perceptron model called 'receptron' and demonstrates its implementation using optical speckle fields for fast, hardware-efficient classification of nonlinear functions.
Findings
Receptron can solve non-linearly separable Boolean functions with a single device.
Optical speckle fields encode diverse Boolean functions without machine learning.
The approach enables simple, efficient neuromorphic data processing hardware.
Abstract
Among several approaches to tackle the problem of energy consumption in modern computing systems, two solutions are currently investigated: one consists of artificial neural networks (ANNs) based on photonic technologies, the other is a different paradigm compared to ANNs and it is based on random networks of nonlinear nanoscale junctions resulting from the assembling of nanoparticles or nanowires as substrates for neuromorphic computing. These networks show the presence of emergent complexity and collective phenomena in analogy with biological neural networks characterized by self-organization, redundancy, non-linearity. Starting from this background, we propose and formalize a generalization of the perceptron model to describe a classification device based on a network of interacting units where the input weights are nonlinearly dependent. We show that this model, called "receptron",…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Photonic and Optical Devices · Semiconductor Lasers and Optical Devices
