STNet: Spectral Transformation Network for Solving Operator Eigenvalue Problem
–Neural Information Processing Systems
Operator eigenvalue problems play a critical role in various scientific fields and engineering applications, yet numerical methods are hindered by the curse of dimensionality. Recent deep learning methods provide an efficient approach to address this challenge by iteratively updating neural networks. These methods' performance relies heavily on the spectral distribution of the given operator: larger gaps between the operator's eigenvalues will improve precision, thus tailored spectral transformations that leverage the spectral distribution can enhance their performance.
Neural Information Processing Systems
Jun-12-2026, 01:08:07 GMT
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