A Block-Activated Decomposition Algorithm for Multi-Stage Stochastic Variational Inequalities
Minh N. Bùi
公開日: 2025/9/30
Abstract
We develop a block-activated decomposition algorithm for multi-stage stochastic variational inequalities with nonanticipativity constraints, which offers two computational novelties: (i) At each iteration, our method activates only a user-chosen block of scenarios. (ii) For each activated scenario, it employs the resolvent of the cost operator and the projector onto the constraint set separately. These features enhance computational tractability, in contrast with existing approaches, which often rely on evaluating the resolvent of the sum of the cost operator and normal cone operator of the constraint set. As an application, we demonstrate that in risk-averse stochastic programming with conditional value-at-risk objectives, our method requires only the projections onto constraint sets, together with solving a univariate equation involving the proximity operators of the cost functions.