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首页> 外文期刊>SIAM Journal on Optimization: A Publication of the Society for Industrial and Applied Mathematics >A TWO-PHASE GRADIENT METHOD FOR QUADRATIC PROGRAMMING PROBLEMS WITH A SINGLE LINEAR CONSTRAINT AND BOUNDS ON THE VARIABLES
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A TWO-PHASE GRADIENT METHOD FOR QUADRATIC PROGRAMMING PROBLEMS WITH A SINGLE LINEAR CONSTRAINT AND BOUNDS ON THE VARIABLES

机译:一种两相梯度方法,用于单线线性约束的二次编程问题和变量界限

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摘要

We propose a gradient-based method for quadratic programming problems with a single linear constraint and bounds on the variables. Inspired by the gradient projection conjugate gradient (GPCG) algorithm for bound-constrained convex quadratic programming [J. J. More and G. Toraldo, SIAM T. Optim., 1 (1991), pp. 93-113], our approach alternates between two phases until convergence: an identification phase, which performs gradient projection iterations until either a candidate active set is identified or no reasonable progress is made, and an unconstrained minimization phase, which reduces the objective function in a suitable space defined by the identification phase, by applying either the conjugate gradient method or a recently proposed spectral gradient method. However, the algorithm differs from GPCG not only because it deals with a more general class of problems, but mainly for the way it stops the minimization phase. This is based on a comparison between a measure of optimality in the reduced space and a measure of bindingness of the variables that are on the bounds, defined by extending the concept of proportional iterate, which was proposed by some authors for box-constrained problems. If the objective function is bounded, the algorithm converges to a stationary point thanks to a suitable application of the gradient projection method in the identification phase. For strictly convex problems, the algorithm converges to the optimal solution in a finite number of steps even in the case of degeneracy. Extensive numerical experiments show the effectiveness of the proposed approach.
机译:我们提出了一种基于梯度的方法,用于在变量上具有单线性约束的二次编程问题和界限。灵感来自渐变投影共轭梯度(GPCG)算法的束缚约束凸二次编程[J. J. More和G. Toraldo,Siam T. Optim。,1(1991),PP。93-113],我们的方法在两个阶段之间交替,直到收敛性:识别阶段,该识别阶段执行梯度投影迭代,直到候选活动集通过施加共轭梯度方法或最近提出的光谱梯度方法,识别出或未获得合理的进展,并且在识别阶段限定的合适空间中降低了目标函数。然而,该算法不仅与GPCG不同,不仅是因为它涉及更一般的问题,而且主要是为了实现最小化阶段的方式。这是基于降低空间中最优性的度量与界限的变量的结合度的度量之间的比较,通过延长比例迭代的概念来定义,这是由一些作者提出的用于框限制问题。如果有界限函数,则由于在识别阶段中的合适应用梯度投影方法适当地应用,该算法会聚到静止点。对于严格凸起的问题,即使在退化的情况下,算法也以有限的步骤中的有限步骤中收敛于最佳解决方案。广泛的数值实验表明了提出的方法的有效性。

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