Numerical experiments exploring the "universality" of empirical risk minimization (ERM) in high dimensions.
Recent work in high-dimensional statisitcs reveals a phenomonon where complex non-linear models have equivalent training and generalization error to corresponding linear gaussian models in the high-dimensional asymptotics
Relevant papers:
Universality Laws for High-Dimensional Learning with Random Features --- Hong Hu & Yue M. Lu (2022)
Universality of Empirical Risk Minimization --- Andrea Montanari & Basil Saeed (2022)