AI RESEARCH

Higher-Order Equilibrium Tracking for EM-Compressible Online Estimation

arXiv CS.LG

ArXi:2605.08864v1 Announce Type: new We study online estimation in latent-variable models by recasting the problem as tracking a moving empirical equilibrium. Standard online EM and stochastic approximation analyses primarily study convergence toward the population parameter and typically do not isolate the empirical batch optimum from the online tracking error at finite horizon. Our framework decomposes the online estimate into the frozen batch equilibrium at the current running statistic and a tracking lag that captures the algorithm's delay behind this moving target.