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Inexact semimonotonic augmented lagrangians with optimal feasibility convergence for convex bound and equality constrained quadratic programming

机译:具有凸边界和等式约束二次规划的最优可行性收敛的不精确半单调扩充拉格朗日

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摘要

A variant of the augmented Lagrangian-type algorithm for strictly convex quadratic programming problems with bounds and equality constraints is considered. The algorithm exploits the adaptive precision control in the solution of auxiliary bound constraint problems in the inner loop while the Lagrange multipliers for the equality constraints are updated in the outer loop. The update rule for the penalty parameter is introduced that depends on the increase of the augmented Lagrangian. Global convergence is proved and an explicit bound on the penalty parameter is given. A qualitatively new feature of our algorithm is a bound on the feasibility error that is independent of conditioning of the constraints. When applied to the class of problems with the spectrum of the Hessian matrix in a given interval, the algorithm returns the solution in O(1) matrix-vector multiplications. The results are valid even for linearly dependent constraints. Theoretical results are illustrated by numerical experiments including the solution of an elliptic variational inequality.
机译:考虑具有边界和等式约束的严格凸二次规划问题的增强拉格朗日型算法的一种变体。该算法利用自适应精度控制来解决内部循环中辅助约束约束问题,同时在外部循环中更新等式约束的拉格朗日乘数。引入了惩罚参数的更新规则,该规则取决于增强的拉格朗日函数的增加。证明了全局收敛性,并给出了惩罚参数的显式界。我们的算法在质上的新功能是对可行性误差的约束,该误差独立于约束条件。当将其应用于给定间隔中的Hessian矩阵频谱的问题类别时,该算法将返回O(1)矩阵向量乘法的解。即使对于线性相关的约束,结果也有效。理论结果通过包括椭圆变分不等式解的数值实验得到说明。

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