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An algorithm to elicitate ELECTRE II, III and IV parameters

机译:一种算法elicitate ELECTRE II, III和IV参数

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Purpose This paper presents an algorithm that can elicitate all or any combination of parameters for the ELECTRE II, III or IV, methods. The algorithm takes some steps of a machine learning ensemble technique, the random forest, and for that, the authors named the approach as Ranking Trees Algorithm. Design/methodology/approach First, for a given method, the authors generate a set of ELECTRE models, where each model solves a random sample of criteria and actions (alternatives). Second, for each generated model, all actions are projected in a 1D space; in general, the best actions have higher values in a 1D space than the worst ones; therefore, they can be used to guide the genetic algorithm in the final step, the optimization phase. Finally, in the optimization phase, each model has its parameters optimized. Findings The results can be used in two different ways; the authors can merge all models, to find the elicitated parameters in this way, or the authors can ensemble the models, and the median of all ranks represents the final rank. The numerical examples achieved a Kendall Tau correlation rank over 0.85, and these results could perform as well as the results obtained by a group of specialists. Originality/value For the first time, the elicitation of ELECTRE parameters is made by an ensemble technique composed of a set of uncorrelated multicriteria models that can generate robust solutions.
机译:目的介绍一种算法,可以elicitate全部或任何组合的参数ELECTRE II, III或IV,方法。机器学习的算法需要一些步骤整体技术、随机森林和,作者排名的命名方法树的算法。首先,对于一个给定的方法,生成一个作者组ELECTRE模型,每个模型解决了随机样本的标准和行动(选择)。所有操作预计在1维空间;一般情况下,最好的行动在一个更高的值一维空间比最坏的;被用来指导的遗传算法最后一步,优化阶段。优化阶段,每个模型都有它参数优化。用于两种不同的方式;所有模型,发现elicitated参数这种方式,或者作者可以整体模型,和所有等级代表最后的中值等级。τ相关性排名超过0.85,这些结果可以执行的结果一群专家。第一次,ELECTRE参数的启发式是由一个技术组成的组不相关的多准则模型生成健壮的解决方案。

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