理解多目标决策问题中最优解的聚类

Varsha Veerappa, Emmanuel Letier
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引用次数: 34

摘要

多目标决策问题在需求工程中普遍存在。解决这些问题的一种常用方法是应用基于搜索的技术来生成一组非支配性解决方案,正式名称为帕累托前沿,它描述了没有其他解决方案同时在所有目标上表现更好的所有解决方案。分析帕累托前沿的形状有助于决策者理解解决方案空间和冲突目标之间可能的权衡。然而,解释最佳解决方案仍然是一个重大挑战。尤其难以确定具有相似目标实现水平的解决方案是否对应于同一设计中的小变量,还是对应于涉及完全不同决策集的非常不同的设计。我们的目标是帮助决策者识别帕累托前沿的强相关解决方案组,这样他们就可以更容易地理解设计选择的范围,识别不同解决方案实现相似目标水平的领域,并在决定选择组中的特定变体之前首先在主要解决方案组之间做出决定。该方法的好处在一个小的例子上得到了说明,并在一个更大的独立生产的工业问题代表的例子上得到了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding clusters of optimal solutions in multi-objective decision problems
Multi-objective decisions problems are ubiquitous in requirements engineering. A common approach to solve them is to apply search-based techniques to generate a set of non-dominated solutions, formally known as the Pareto front, that characterizes all solutions for which no other solution performs better on all objectives simultaneously. Analysing the shape of the Pareto front helps decision makers understand the solution space and possible tradeoffs among the conflicting objectives. Interpreting the optimal solutions, however, remains a significant challenge. It is in particular difficult to identify whether solutions that have similar levels of goals attainment correspond to minor variants within a same design or to very different designs involving completely different sets of decisions. Our goal is to help decision makers identify groups of strongly related solutions in a Pareto front so that they can understand more easily the range of design choices, identify areas where strongly different solutions achieve similar levels of objectives, and decide first between major groups of solutions before deciding for a particular variant within the chosen group. The benefits of the approach are illustrated on a small example and validated on a larger independently-produced example representative of industrial problems.
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