2023
DOI: 10.48550/arxiv.2301.07820
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Emergence of the SVD as an interpretable factorization in deep learning for inverse problems

Abstract: We demonstrate the emergence of weight matrix singular value decomposition (SVD) in interpreting neural networks (NNs) for parameter estimation from noisy signals. The SVD appears naturally as a consequence of initial application of a descrambling transform -a recently-developed technique for addressing interpretability in NNs [1]. We find that within the class of noisy parameter estimation problems, the SVD may be the means by which networks memorize the signal model. We substantiate our theoretical findings … Show more

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