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Constrained optimization using multiple objective programming

机译:使用多目标规划进行约束优化

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In practical applications of mathematical programming it is frequently observed that the decision maker prefers apparently suboptimal solutions. A natural explanation for this phenomenon is that the applied mathematical model was not sufficiently realistic and did not fully represent all the decision makers criteria and constraints. Since multicriteria optimization approaches are specifically designed to incorporate such complex preference structures, they gain more and more importance in application areas as, for example, engineering design and capital budgeting. The aim of this paper is to analyze optimization problems both from a constrained programming and a multicriteria programming perspective. It is shown that both formulations share important properties, and that many classical solution approaches have correspondences in the respective models. The analysis naturally leads to a discussion of the applicability of some recent approximation techniques for multicriteria programming problems for the approximation of optimal solutions and of Lagrange multipliers in convex constrained programming. Convergence results are proven for convex and nonconvex problems.
机译:在数学程序设计的实际应用中,经常观察到决策者倾向于看似次优的解决方案。这种现象的自然解释是,所应用的数学模型不够现实,不能完全代表所有决策者的标准和约束条件。由于多准则优化方法经过专门设计以包含此类复杂的偏好结构,因此它们在应用程序领域(例如工程设计和资本预算)变得越来越重要。本文的目的是从约束编程和多准则编程的角度分析优化问题。结果表明,两种公式都具有重要的特性,并且许多经典的求解方法在各自的模型中都有对应关系。分析自然会引起对一些最近的近似技术在凸约束规划中对最优解和Lagrange乘子逼近的多准则编程问题的适用性的讨论。证明了凸和非凸问题的收敛结果。

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