AI RESEARCH

Ridge Regression from Poisson Resetting: A Renewal Perspective on Spectral Regularization

arXiv CS.LG

ArXi:2605.30059v1 Announce Type: new We connect stochastic resetting from non-equilibrium statistical physics with ridge regularization in statistical learning. For linear gradient flow, resetting to the origin at rate $r$ produces stationary mean $(X^\top X+rI)^{-1}X^\top y$, exactly the ridge estimator with penalty $\lambda=r$. This uses the known Laplace-transform relationship between ridge regression and exponential-time averaging of gradient flow, with the exponential time now interpreted as the stationary age associated with Poisson resetting.