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首页> 外文期刊>Journal of Optimization Theory and Applications >Globally and Quadratically Convergent Algorithm for Minimizing the Sum of Euclidean Norms
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Globally and Quadratically Convergent Algorithm for Minimizing the Sum of Euclidean Norms

机译:最小化欧几里德范数和的全局和二次收敛算法

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摘要

For the problem of minimizing the sum of Euclidean norms (MSN), most existing quadratically convergent algorithms require a strict complementarity assumption. However, this assumption is not satisfied for a number of MSN problems. In this paper, we present a globally and quadratically convergent algorithm for the MSN problem. In particular, the quadratic convergence result is obtained without assuming strict complementarity. Examples without strictly complementary solutions are given to show that our algorithm can indeed achieve quadratic convergence. Preliminary numerical results are reported.
机译:对于最小化欧几里得范数(MSN)的问题,大多数现有的二次收敛算法都需要严格的互补假设。但是,许多MSN问题都不能满足此假设。在本文中,我们提出了一种针对MSN问题的全局和二次收敛算法。特别地,在不假设严格互补的情况下获得二次收敛结果。没有严格补充解的例子说明了我们的算法确实可以实现二次收敛。报告了初步的数值结果。

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