AI RESEARCH
Power-Law Spectrum of the Random Feature Model
arXiv CS.LG
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ArXi:2603.14578v1 Announce Type: cross Scaling laws for neural networks, in which the loss decays as a power-law in the number of parameters, data, and compute, depend fundamentally on the spectral structure of the data covariance, with power-law eigenvalue decay appearing ubiquitously in vision and language tasks. A central question is whether this spectral structure is preserved or destroyed when data passes through the basic building block of a neural network: a random linear projection followed by a nonlinear activation.