13-17 April 2026
Universidad Nacional de Colombia / Universidad de los Andes
America/Bogota timezone

Scaling Laws and Spectra of Shallow Neural Networks in the Feature-Learning Regime

16 Apr 2026, 16:00
30m
ML-513 (Universidad de los Andes)

ML-513

Universidad de los Andes

Calle 19A # 1E - 37 Bogotá, Colombia
Invited talk Statistical Physics Keynote

Speaker

Dr Bruno Loureiro (ENS Paris)

Description

Neural scaling laws underlie many of the recent advances in deep learning, yet their theoretical understanding remains largely confined to linear models. In this work, we present a systematic analysis of scaling laws for quadratic and diagonal neural networks in the feature learning regime. Leveraging connections with matrix compressed sensing and LASSO, we derive a detailed phase diagram for the scaling exponents of the excess risk as a function of sample complexity and weight decay. This analysis uncovers crossovers between distinct scaling regimes and plateau behaviours, mirroring phenomena widely reported in the empirical neural scaling literature. Furthermore, we establish a precise link between these regimes and the spectral properties of the trained network weights, which we characterize in detail. Consequently, we provide a theoretical validation of recent empirical observations connecting the emergence of power-law tails in the weight spectrum with network generalization performance, yielding an interpretation from first principles.

https://arxiv.org/abs/2509.24882

Primary author

Dr Bruno Loureiro (ENS Paris)

Presentation Materials

There are no materials yet.