Decision-Making with Multiple Interacting Criteria: An Indirect Elicitation of Preference Parameters Using Evolutionary Algorithms

E. Fernández, Jorge Navarro, Efrain Solares
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Abstract

Decision-making problems often require characterization of alternatives through multiple criteria. In contexts where some of these criteria interact, the decision maker (DM) must consider the interaction effects during the aggregation of criteria scores. The well-known ELECTRE (ELimination Et Choix Traduisant la REalité) methods were recently improved to deal with interacting criteria fulfilling several relevant properties, addressing the main types of interaction, and retaining most of the fundamental characteristics of the classical methods. An important criticism to such a family of methods is that defining its parameter values is often difficult and can involve significant challenges and high cognitive effort for the DM; this is exacerbated in the improved version whose parameters are even less intuitive. Here, we describe an evolutionary-based method in which parameter values are inferred by exploiting easy-to-make decisions made or accepted by the DM, thereby reducing his/her cognitive effort. A genetic algorithm is proposed to solve a regression-inspired nonlinear optimization problem. To the best of our knowledge, this is the first paper addressing the indirect elicitation of the ELECTRE model’s parameters with interacting criteria. The proposal is assessed through both in-sample and out-of-sample experiments. Statistical tests indicate robustness of the proposal in terms of the number of criteria and their possible interactions. Results show almost perfect effectiveness to reproduce the DM’s preferences in all situations.
决策与多个相互作用的标准:使用进化算法的偏好参数的间接引出
决策问题通常需要通过多个标准来描述备选方案。在其中一些标准相互作用的环境中,决策者(DM)必须在标准分数聚合期间考虑相互作用的影响。众所周知的ELECTRE (ELimination Et Choix Traduisant la realit)方法最近得到了改进,以处理满足几个相关属性的相互作用标准,解决了相互作用的主要类型,并保留了经典方法的大多数基本特征。对此类方法族的一个重要批评是,定义其参数值通常很困难,并且可能涉及DM的重大挑战和高认知努力;这在参数更不直观的改进版本中更加严重。在这里,我们描述了一种基于进化的方法,其中参数值是通过利用DM做出或接受的易于做出的决策来推断的,从而减少了他/她的认知努力。提出了一种遗传算法来解决回归启发的非线性优化问题。据我们所知,这是第一篇用相互作用标准间接引出ELECTRE模型参数的论文。通过样本内和样本外实验对该方案进行了评估。统计检验表明,就标准数量及其可能的相互作用而言,该提案具有稳健性。结果显示,在所有情况下复制DM偏好的效果几乎是完美的。
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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