AI RESEARCH
Free Decompression with Algebraic Spectral Curves
arXiv CS.LG
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ArXi:2605.03634v1 Announce Type: cross Tools from random matrix theory have become central to deep learning theory, using spectral information to provide mechanisms for modeling generalization, robustness, scaling, and failure modes. While often capable of modeling empirical behavior, practical computations are limited by matrix size, often imposing a restriction to models that are too small to be realistic. This motivates the inference of properties of larger models from the behavior of smaller ones.