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arxiv: 2308.11630 · v2 · pith:IXO3J4LG · submitted 2023-08-10 · cs.LG · physics.optics

Addressing Data Scarcity in Optical Matrix Multiplier Modeling Using Transfer Learning

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classification cs.LG physics.optics
keywords datamodelmatrixanalyticalexperimentallearningmodelingoptical
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We present and experimentally evaluate using transfer learning to address experimental data scarcity when training neural network (NN) models for Mach-Zehnder interferometer mesh-based optical matrix multipliers. Our approach involves pre-training the model using synthetic data generated from a less accurate analytical model and fine-tuning with experimental data. Our investigation demonstrates that this method yields significant reductions in modeling errors compared to using an analytical model, or a standalone NN model when training data is limited. Utilizing regularization techniques and ensemble averaging, we achieve < 1 dB root-mean-square error on the matrix weights implemented by a 3x3 photonic chip while using only 25% of the available data.

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