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An optimal algorithm for minimization of quadratic functions with bounded spectrum subject to separable convex inequality and linear equality constraints

机译:具有可分离凸不等式和线性等式约束的有界谱二次函数最小化的优化算法

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摘要

An, in a sense, optimal algorithm for minimization of quadratic functions subject to separable convex inequality and linear equality constraints is presented. Its unique feature is an error bound in terms of bounds on the spectrum of the Hessian of the cost function. If applied to a class of problems with the spectrum of the Hessians in a given positive interval, the algorithm can find approximate solutions in a uniformly bounded number of simple iterations, such as matrix-vector multiplications. Moreover, if the class of problems admits a sparse representation of the Hessian, it simply follows that the cost of the solution is proportional to the number of unknowns. Theoretical results are illustrated by numerical experiments.
机译:在某种意义上,提出了一种最小化二次函数的最优算法,该二次函数受可分凸不等式和线性相等约束的约束。它的独特功能是根据成本函数的Hessian谱图的范围来确定误差范围。如果将其应用于给定正区间内的Hessian频谱问题,该算法可以在均匀有限数量的简单迭代(例如矩阵矢量乘法)中找到近似解。此外,如果问题类别允许使用粗略的Hessian表示,则可以得出结论,解决方案的成本与未知数的数量成正比。理论结果通过数值实验说明。

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