Hybrid optical neural networks (HONNs) offload some electronic computation to optical preprocessors to achieve low-power and fast training and inference phases in machine learning tasks. Our contribution to the development of HONNs is a spectral-methods paradigm for building synthetic training data for machine-learned models. Here, our synthetic training image data does not resemble the image test data. As a result, the neural network focuses on learning specific features parameterized by the synthetic training data. Within this paradigm, a dataset's singular value decomposition entropy indicates {\it learnability}, i.e., how rapidly a model converges. Subsequently, we train a neural network model to rapidly learn specific features for further downstream analyses.
@article{arxiv.2304.12172,
title = {Generalized Training for Neural Network Learnability: a Spectral Methods Approach},
author = {Altai Perry and Luat Vuong},
journal= {arXiv preprint arXiv:2304.12172},
year = {2025}
}
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Code is available at: https://github.com/altaiperry/Reconstruction24_Perry