Solving Lagrangian variational inequalities with applications to stochastic programming

被引:0
|
作者
R. Tyrrell Rockafellar
Jie Sun
机构
[1] University of Washington,Department of Mathematics
[2] Curtin University,Department of Mathematics and Statistics
来源
Mathematical Programming | 2020年 / 181卷
关键词
Stochastic variational inequality problems; Stochastic programming problems; Lagrangian variational inequalities; Lagrange multipliers; Progressive hedging algorithm; Proximal point algorithm; Composite optimization; 90C15; 90C33; 90C46;
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摘要
Lagrangian variational inequalities feature both primal and dual elements in expressing first-order conditions for optimality in a wide variety of settings where “multipliers” in a very general sense need to be brought in. Their stochastic version relates to problems of stochastic programming and covers not only classical formats with inequality constraints but also composite models with nonsmooth objectives. The progressive hedging algorithm, as a means of solving stochastic programming problems, has however focused so far only on optimality conditions that correspond to variational inequalities in primal variables alone. Here that limitation is removed by appealing to a recent extension of progressive hedging to multistage stochastic variational inequalities in general.
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页码:435 / 451
页数:16
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