AI RESEARCH

Stochastic Auto-conditioned Fast Gradient Methods with Optimal Rates

arXiv CS.LG

ArXi:2604.06525v1 Announce Type: cross Achieving optimal rates for stochastic composite convex optimization without prior knowledge of problem parameters remains a central challenge. In the deterministic setting, the auto-conditioned fast gradient method has recently been proposed to attain optimal accelerated rates without line-search procedures or prior knowledge of the Lipschitz smoothness constant, providing a natural prototype for parameter-free acceleration. However, extending this approach to the stochastic setting has proven technically challenging and remains open.