首页> 外文会议>MultiMedia and Information Technology, 2008. MMIT '08 >A Fast Algorithm for Linearly Constrained Quadratic Programming Problems with Lower and Upper Bounds
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A Fast Algorithm for Linearly Constrained Quadratic Programming Problems with Lower and Upper Bounds

机译:具有上下界的线性约束二次规划问题的快速算法

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There are many applications related to linearly constrained quadratic programs subjected to upper and lower bounds. Lower bounds and upper bounds are treated as different constraints by common quadratic programming algorithms. These traditional treatments significantly increase the computation of quadratic programming problems. We employ pivoting algorithm to solve quadratic programming models. The algorithm can convert the quadratic programming with upper and lower bounds into quadratic programming with upper or lower bounds equivalently by making full use of the Karush-Kuhn-Tucker (KKT) conditions of the problem and decrease the computation. The algorithm can further decrease calculation to obtain solution of quadratic programming problems by solving a smaller linear inequality system which is the linear part of KKT conditions for the quadratic programming problems and is equivalent to the KKT conditions while maintaining complementarity conditions of the KKT conditions to hold.
机译:有许多与受上限和下限限制的线性约束二次程序有关的应用。下限和上限被常见的二次编程算法视为不同的约束。这些传统的处理方法大大增加了二次编程问题的计算量。我们采用枢轴算法来求解二次规划模型。通过充分利用问题的Karush-Kuhn-Tucker(KKT)条件,该算法可以将具有上限和下限的二次编程等效地转换为具有上限或下限的二次编程,并减少计算量。通过解决较小的线性不等式系统,该算法可以进一步减少计算量,从而获得二次规划问题的解决方案,该系统是二次规划问题的KKT条件的线性部分,相当于KKT条件,同时保持KKT条件的互补条件保持不变。 。

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