首页> 外文期刊>SIAM Journal on Optimization: A Publication of the Society for Industrial and Applied Mathematics >CONVERGENCE PROPERTIES OF A SECOND ORDER AUGMENTED LAGRANGIAN METHOD FOR MATHEMATICAL PROGRAMS WITH COMPLEMENTARITY CONSTRAINTS
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CONVERGENCE PROPERTIES OF A SECOND ORDER AUGMENTED LAGRANGIAN METHOD FOR MATHEMATICAL PROGRAMS WITH COMPLEMENTARITY CONSTRAINTS

机译:具有互补限制的二阶增强拉格朗日方法的融合属性

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摘要

Mathematical programs with complementarity constraints (MPCCs) are difficult optimization problems that do not satisfy the majority of the usual constraint qualifications (CQs) for standard nonlinear optimization. Despite this fact, classical methods behave well when applied to MPCCs. Recently, Izmailov, Solodov, and Uskov proved that first order augmented Lagrangian methods, under a natural adaption of the linear independence constraint qualification to the MPCC setting (MPCC-LICQ), converge to strongly stationary (S-stationary) points, if the multiplier sequence is bounded. If the multiplier sequence is not bounded, only Clarke stationary (C-stationary) points are recovered. In this paper we improve this result in two ways. For the case of bounded multipliers we are able replace the MPCC-LICQ assumption by the much weaker MPCC-relaxed positive linear dependence condition (MPCC-RCLPD). For the case with unbounded multipliers, building upon results from Scholtes, Anitescu, and others, we show that a second order augmented Lagrangian method converges to points that are at least Mordukhovich stationary (M-stationary) but we still need the more stringent MPCC-LICQ assumption. Numerical tests, validating the theory, are also presented.
机译:具有互补约束(MPCC)的数学程序是难度优化问题,不满足标准非线性优化的大多数通常的约束资格(CQS)。尽管如此,古典方法在应用于MPCC时表现得很好。最近,Izmailov,Solodov和Uskov证明了一阶增强拉格朗日方法,在自然适应线性独立约束资格对MPCC设置(MPCC-LICQ),汇聚到强静止(S-静止)点,如果乘法器序列是有界的。如果乘法器序列未受限制,则仅恢复云卡静止(C-Gatchary)点。在本文中,我们以两种方式改善了这一结果。对于有界乘法器的情况,我们能够通过更弱的MPCC放宽的正线性依赖条件(MPCC-RCLPD)更换MPCC-Lick假设。对于无界乘法器的情况,在Scholtes,Anitescu等结果上,我们表明,二阶增强拉格朗日方法融合到至少迁移的点(静止),但我们仍然需要更严格的MPCC- Lick假设。还提出了数值测试,验证了该理论。

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