All-optical graph representation learning using integrated diffractive photonic computing units
Tao Yan, Rui Yang, Ziyang Zheng, Xing Lin, Hongkai Xiong, Qionghai Dai

TL;DR
This paper introduces an all-optical graph neural network architecture using integrated diffractive photonic units, enabling high-speed processing of complex graph-structured data with superior performance.
Contribution
It proposes the diffractive graph neural network (DGNN) architecture that leverages integrated diffractive photonic units for efficient, nonlinear-free optical graph learning.
Findings
Achieved superior classification performance on benchmark datasets.
Demonstrated elimination of nonlinear functions in optical message passing.
Showed potential for high-efficiency processing of large-scale graph data.
Abstract
Photonic neural networks perform brain-inspired computations using photons instead of electrons that can achieve substantially improved computing performance. However, existing architectures can only handle data with regular structures, e.g., images or videos, but fail to generalize to graph-structured data beyond Euclidean space, e.g., social networks or document co-citation networks. Here, we propose an all-optical graph representation learning architecture, termed diffractive graph neural network (DGNN), based on the integrated diffractive photonic computing units (DPUs) to address this limitation. Specifically, DGNN optically encodes node attributes into strip optical waveguides, which are transformed by DPUs and aggregated by on-chip optical couplers to extract their feature representations. Each DPU comprises successive passive layers of metalines to modulate the electromagnetic…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Photonic and Optical Devices · Optical Network Technologies
MethodsGraph Neural Network
