AI RESEARCH

Near-Optimal Pure Machine Unlearning for Smooth Strongly Convex Losses

arXiv CS.LG

ArXi:2606.01527v1 Announce Type: new Machine unlearning is motivated by legal and user-facing requirements to remove the influence of individuals' data from trained models, such as the right to be forgotten. Prior work has developed algorithms and error bounds for unlearning in smooth strongly convex stochastic optimization, but the fundamental statistical cost of unlearning has remained unclear. We nearly resolve this problem by proving upper and lower bounds on the excess population risk of approximate $\varepsilon$-unlearning; our bounds are tight up to a condition-number factor.