AI RESEARCH

Stochastic Trust-Region Methods for Over-parameterized Models

arXiv CS.LG

ArXi:2604.14017v1 Announce Type: cross Under interpolation-type assumptions such as the strong growth condition, stochastic optimization methods can attain convergence rates comparable to full-batch methods, but their performance, particularly for SGD, remains highly sensitive to step-size selection. To address this issue, we propose a unified stochastic trust-region framework that eliminates manual step-size tuning and extends naturally to equality-constrained problems.