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首页> 外文期刊>Journal of industrial and management optimization >INVERSE QUADRATIC PROGRAMMING PROBLEM WITH l_1 NORM MEASURE
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INVERSE QUADRATIC PROGRAMMING PROBLEM WITH l_1 NORM MEASURE

机译:L_1规范测量的反二次编程问题

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We consider an inverse quadratic programming (QP) problem in which the parameters in the objective function of a given QP problem are adjusted as little as possible so that a known feasible solution becomes the optimal one. We formulate this problem as a minimization problem involving l(1) vector norm with a positive semidefinite cone constraint. By utilizing convex optimization theory, we rewrite its first order optimality condition as a generalized equation. Under extremely simple assumptions, we prove that any element of the generalized Jacobian of the equation at its solution is nonsingular. Based on this, we construct an inexact Newton method with Armijo line search to solve the equation and demonstrate its global convergence. Finally, we report the numerical results illustrating effectiveness of the Newton methods.
机译:我们考虑逆二次编程(QP)问题,其中根据所知的QP问题的目标函数的参数,使得已知的可行解决方案成为最佳的问题。我们将该问题作为最小化问题,涉及L(1)载体标准与积极的半纤维锥限制。通过利用凸优化理论,我们将其第一阶最优性条件重写为广义方程。在极其简单的假设下,我们证明了在其解决方案中的方程的广义雅各比的任何元素是非法的。基于此,我们用ARMIJO线路搜索构建了一个不精确的牛顿方法,以解决方程并展示其全球融合。最后,我们报告了说明牛顿方法有效性的数值结果。

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