2023
DOI: 10.1007/s10483-023-2998-7
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A dive into spectral inference networks: improved algorithms for self-supervised learning of continuous spectral representations

Abstract: We propose a self-supervising learning framework for finding the dominant eigenfunction-eigenvalue pairs of linear and self-adjoint operators. We represent target eigenfunctions with coordinate-based neural networks and employ the Fourier positional encodings to enable the approximation of high-frequency modes. We formulate a self-supervised training objective for spectral learning and propose a novel regularization mechanism to ensure that the network finds the exact eigenfunctions instead of a space spanned … Show more

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