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Reference point method with importance weighted ordered partial achievements

机译:具有重要性加权有序部分成就的参考点方法

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摘要

The Reference Point Method (RPM) is a very convenient technique for interactive analysis of the multiple criteria optimization problems. The interactive analysis is navigated with the commonly accepted control parameters expressing reference levels for the individual objective functions. The partial achievement functions quantify the DM satisfaction from the individual outcomes with respect to the given reference levels, while the final scalarizing achievement function is built as the augmented max–min aggregation of the partial achievements. In order to avoid inconsistencies caused by the regularization, the max–min solution may be regularized by the Ordered Weighted Averages (OWA) with monotonic weights which combines all the partial achievements allocating the largest weight to the worst achievement, the second largest weight to the second worst achievement, and so on. Further, following the concept of the Weighted OWA (WOWA), the importance weighting of several achievements may be incorporated into the RPM. Such a WOWA RPM approach uses importance weights to affect achievement importance by rescaling accordingly its measure within the distribution of achievements rather than by straightforward rescaling of achievement values. The recent progress in optimization methods for ordered averages allows one to implement the WOWA RPM quite effectively as extension of the original constraints and criteria with simple linear inequalities. There is shown that the OWA and WOWA RPM models meet the crucial requirements with respect to the efficiency of generated solutions as well as the controllability of interactive analysis by the reference levels.
机译:参考点方法(RPM)是一种用于交互式分析多准则优化问题的非常方便的技术。交互式分析使用表示各个目标功能的参考水平的公认控制参数进行导航。部分成就函数根据给定的参考水平从单个结果量化DM满意度,而最终的标定成就函数被构建为部分成就的增强的最大-最小集合。为了避免由正则化引起的不一致,可以通过具有单调权重的有序加权平均值(OWA)对最大-最小解进行正则化,该加权加权平均合并了将偏重最大的部分分配给最差的部分,将第二大的部分分配给最大的部分。第二坏成绩,依此类推。此外,遵循加权OWA(WOWA)的概念,可以将一些成就的重要性加权合并到RPM中。这种WOWA RPM方法使用重要性权重来影响成就的重要性,方法是在成就分配中相应地调整其度量值,而不是通过直接调整成就值来影响成就重要性。有序平均值优化方法的最新进展使人们可以非常有效地实现WOWA RPM,以扩展原始约束和具有简单线性不等式的条件。结果表明,OWA和WOWA RPM模型在生成解决方案的效率以及参考级别的交互式分析的可控制性方面都满足关键要求。

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