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Primal and dual approximation algorithms for convex vector optimization problems

机译:凸向量优化问题的原始和对偶近似算法

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摘要

Two approximation algorithms for solving convex vector optimization problems (CVOPs) are provided. Both algorithms solve the CVOP and its geometric dual problem simultaneously. The first algorithm is an extension of Benson's outer approximation algorithm, and the second one is a dual variant of it. Both algorithms provide an inner as well as an outer approximation of the (upper and lower) images. Only one scalar convex program has to be solved in each iteration. We allow objective and constraint functions that are not necessarily differentiable, allow solid pointed polyhedral ordering cones, and relate the approximations to an appropriate ∈ -solution concept. Numerical examples are provided.
机译:提供了两种用于解决凸向量优化问题(CVOP)的近似算法。两种算法都同时解决了CVOP及其几何对偶问题。第一个算法是Benson外部逼近算法的扩展,第二个算法是它的对偶变体。两种算法都提供(上部和下部)图像的内部和外部近似。每次迭代中仅需求解一个标量凸程序。我们允许不一定要求微分的目标函数和约束函数,允许使用实心点多面体排序锥,并将近似值与适当的ε-解概念相关。提供了数值示例。

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