AI RESEARCH

Extensions of Robbins-Siegmund Theorem with Applications in Reinforcement Learning

arXiv CS.LG

ArXi:2509.26442v2 Announce Type: replace The Robbins-Siegmund theorem establishes the convergence of stochastic processes that are almost supermartingales and is one of the most commonly used approaches for analyzing stochastic iterative algorithms in stochastic approximation and reinforcement learning (RL). However, its original form has a significant limitation as it requires the zero-order term to be summable. In many important RL applications, this summable condition, however, cannot be met.