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A PREDICTOR-CORRECTOR INTERIOR-POINT ALGORITHM FOR CONVEX QUADRATIC PROGRAMMING

机译:凸二次规划的预测校正内点算法。

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The simplified Newton method, at the expense of fast convergence, reduces the work required by Newton method by reusing the initial Jacobian matrix. The composite Newton method attempts to balance the trade-off between expense and fast convergence by composing one Newton step with one simplified Newton step. Recently, Mehrotra suggested a predictor-corrector variant of primal-dual interior point method for linear programming. It is currently the interiorpoint method of the choice for linear programming. In this work we propose a predictor-corrector interior-point algorithm for convex quadratic programming. It is proved that the algorithm is equivalent to a level-1 perturbed composite Newton method. Computations in the algorithm do not require that the initial primal and dual points be feasible. Numerical experiments are made.
机译:简化的牛顿法以快速收敛为代价,通过重用初始雅可比矩阵来减少牛顿法所需的工作。复合牛顿法试图通过将一个牛顿步骤与一个简化的牛顿步骤组成,在费用和快速收敛之间取得平衡。最近,Mehrotra提出了用于线性规划的原始-对偶内点法的预测器-校正器变体。目前,它是线性编程选择的Interiorpoint方法。在这项工作中,我们提出了凸二次规划的预测器-校正器内点算法。证明该算法等效于一级扰动复合牛顿法。算法中的计算不需要初始的原始点和对偶点是可行的。进行了数值实验。

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