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首页> 外文期刊>TOP: An Official Journal of the Spanish Society of Statistics and Operations Research >The augmented Lagrangian method for a type of inverse quadratic programming problems over second-order cones
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The augmented Lagrangian method for a type of inverse quadratic programming problems over second-order cones

机译:二阶锥上一类逆二次规划问题的增强拉格朗日方法

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The focus of this paper is on studying an inverse second-order cone quadratic programming problem, in which the parameters in the objective function need to be adjusted as little as possible so that a known feasible solution becomes the optimal one. We formulate this problem as a minimization problem with cone constraints, and its dual, which has fewer variables than the original one, is a semismoothly differentiable (SC~1) convex programming problem with both a linear inequality constraint and a linear second-order cone constraint. We demonstrate the global convergence of the augmented Lagrangian method with an exact solution to the subproblem and prove that the convergence rate of primal iterates, generated by the augmented Lagrangian method, is proportional to 1~1/2, and the rate of multiplier iterates is proportional to 1/r~1/2, where r is the penalty parameter in the augmented Lagrangian. Furthermore, a semismooth Newton method with Armijo line search is constructed to solve the subproblems in the augmented Lagrangian approach. Finally, numerical results are reported to show the effectiveness of the augmented Lagrangian method with both an exact solution and an inexact solution to the subproblem for solving the inverse second-order cone quadratic programming problem.
机译:本文的重点是研究逆二阶锥二次规划问题,其中目标函数中的参数需要尽可能少地调整,以使已知的可行解成为最优解。我们将此问题表述为具有锥约束的极小化问题,其对偶变量比原始约束少,是同时具有线性不等式约束和线性二阶锥的半光滑微分(SC〜1)凸规划问题约束。我们用子问题的精确解证明了扩充拉格朗日方法的全局收敛性,并证明了扩充拉格朗日方法生成的原始迭代的收敛速度与1〜1/2成正比,并且乘数迭代的速度为与1 / r〜1/2成正比,其中r是增强拉格朗日方程中的惩罚参数。此外,构建了带有Armijo线搜索的半光滑牛顿法,以解决扩展拉格朗日方法中的子问题。最终,数值结果被报道以显示扩展的拉格朗日方法的有效性,该子问题的精确解和不精确解都可以解决反二阶锥二次规划问题。

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