Fourier Preconditioning for Neural Feature Learning
Mutual information (MI)-inspired feature learning techniques are capable of generating low-dimensional embeddings that retain nonlinear dependence structures, but direct estimations of MI suffer from noisy probability distribution estimates in the low-data regime. The H-Score objective, computed from second-order statistics, provides a practical proxy metric for training feature extraction networks. We prove that H-Score is invariant to invertible transformations in the unrestricted functional setting, but becomes sensitive to input basis rotations under constrained approximation classes. Cons
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Why these links exist
- Linked via arxiv authorPreston Pitzer →
Fourier Preconditioning for Neural Feature Learning
- Linked via arxiv authorAnish Pradhan →
Fourier Preconditioning for Neural Feature Learning
- Linked via arxiv authorHarpreet S. Dhillon →
Fourier Preconditioning for Neural Feature Learning
