Nonlinear Inference Capacity of Fiber-Optical Extreme Learning Machines
Sobhi Saeed, Mehmet M\"uft\"uoglu, Glitta R. Cheeran, Thomas Bocklitz, Bennet Fischer, Mario Chemnitz

TL;DR
This paper explores the nonlinear inference capacity of fiber-optical Extreme Learning Machines, demonstrating their potential to outperform deep neural networks in classification tasks by leveraging optical nonlinearity.
Contribution
It introduces the concept of nonlinear inference capacity in optical neuromorphic computing and shows how fiber-based systems can surpass deep neural networks in classification performance.
Findings
Nonlinear optical fiber systems can exceed deep neural network performance.
Classification performance correlates with fiber nonlinear dynamics.
The framework enables benchmarking physics-inspired computing architectures.
Abstract
The intrinsic complexity of nonlinear optical phenomena offers a fundamentally new resource to analog brain-inspired computing, with the potential to address the pressing energy requirements of artificial intelligence. We introduce and investigate the concept of nonlinear inference capacity in optical neuromorphic computing in highly nonlinear fiber-based optical Extreme Learning Machines. We demonstrate that this capacity scales with nonlinearity to the point where it surpasses the performance of a deep neural network model with five hidden layers on a scalable nonlinear classification benchmark. By comparing normal and anomalous dispersion fibers under various operating conditions and against digital classifiers, we observe a direct correlation between the system's nonlinear dynamics and its classification performance. Our findings suggest that image recognition tasks, such as MNIST,…
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Taxonomy
TopicsMachine Learning and ELM · Neural Networks and Reservoir Computing · Neural Networks and Applications
