Min cost improvement and max gain stability in multicriteria sorting methods on combinatorial domains

IF 1.9 Q3 MANAGEMENT
Nawal Benabbou, Hugo Martin, Patrice Perny
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引用次数: 1

Abstract

Various multicriteria sorting methods have been proposed in the literature to assign the feasible alternatives into predefined categories. We consider here problems involving a set of totally ordered categories representing different achievement levels in the satisfaction of criteria. As in many existing methods, the assignment rule of an alternative to a category is based on the comparison of its performance vector to reference profiles defining lower bounds of the categories. Within this standard setting we address a new problem that consists in finding how to modify a given solution, within a combinatorial set of alternatives, to upgrade it in the upper category (or higher) at minimum cost. We also consider the problem of identifying the sequence of solutions that minimize the total cost while satisfying some budget constraint at every step, and the problem of determining how to modify the current solution to save money while staying in the same category. We first propose a general approach based on mixed integer (linear or quadratic) programming to solve these problems. Then, we implement this approach on various multiobjective combinatorial problems, such as multi-agent assignment problems and multiobjective knapsack problems. Numerical tests are provided to establish the feasibility of the approach on instances of different sizes.

组合域上多准则排序方法的最小成本改进和最大增益稳定性
文献中提出了各种多准则排序方法,将可行的备选方案分配到预定义的类别中。我们在这里考虑的问题涉及一组完全有序的类别,代表不同的成就水平在标准的满足。与许多现有方法一样,类别的替代方案的分配规则是基于其性能向量与定义类别下界的参考配置文件的比较。在这个标准设置中,我们解决了一个新问题,即如何在一组组合的备选方案中修改给定的解决方案,以最小的成本将其升级到更高的类别(或更高)。我们还考虑了在每一步都满足预算约束的情况下确定总成本最小的解决方案序列的问题,以及确定如何修改当前解决方案以在保持同一类别的情况下节省资金的问题。我们首先提出了一种基于混合整数(线性或二次)规划的通用方法来解决这些问题。然后,我们将该方法应用于各种多目标组合问题,如多智能体分配问题和多目标背包问题。通过数值试验验证了该方法在不同尺寸实例上的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.70
自引率
10.00%
发文量
14
期刊介绍: The Journal of Multi-Criteria Decision Analysis was launched in 1992, and from the outset has aimed to be the repository of choice for papers covering all aspects of MCDA/MCDM. The journal provides an international forum for the presentation and discussion of all aspects of research, application and evaluation of multi-criteria decision analysis, and publishes material from a variety of disciplines and all schools of thought. Papers addressing mathematical, theoretical, and behavioural aspects are welcome, as are case studies, applications and evaluation of techniques and methodologies.
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