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Elucidating the Physics of Nanophotonic Structures Through Explainable Machine Learning Algorithms

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Abstract

Explainable machine learning algorithms were applied to convolutional neural networks to reveal deeper insights into the properties of metamaterials, demonstrating new avenues for physics discovery and device optimization in optics and photonics.

© 2020 The Author(s)

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