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ELECTRE tree: a machine learning approach to infer ELECTRE Tri-B parameters

机译:ELECTRE树:机器学习方法来推断ELECTRE Tri-B参数

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Purpose This paper presents an algorithm that can elicitate (infer) all or any combination of elimination and choice expressing reality (ELECTRE) Tri-B parameters. For example, a decision maker can maintain the values for indifference, preference and veto thresholds, and the study's algorithm can find the criteria weights, reference profiles and the lambda cutting level. The study's approach is inspired by a machine learning ensemble technique, the random forest, and for that, the authors named the study's approach as ELECTRE tree algorithm. Design/methodology/approach First, the authors generate a set of ELECTRE Tri-B models, where each model solves a random sample of criteria and alternates. Each sample is made with replacement, having at least two criteria and between 10% and 25% of alternates. Each model has its parameters optimized by a genetic algorithm (GA) that can use an ordered cluster or an assignment example as a reference to the optimization. Finally, after the optimization phase, two procedures can be performed; the first one will merge all models, finding in this way the elicitated parameters and in the second procedure, each alternate is classified (voted) by each separated model, and the majority vote decides the final class. Findings The authors have noted that concerning the voting procedure, nonlinear decision boundaries are generated and they can be suitable in analyzing problems of the same nature. In contrast, the merged model generates linear decision boundaries. Originality/value The elicitation of ELECTRE Tri-B parameters is made by an ensemble technique that is composed of a set of multicriteria models that are engaged in generating robust solutions.
机译:目的介绍一种算法,可以elicitate(推断)的全部或任何组合消除和选择表达现实(ELECTRE) Tri-B参数。决策者可以维护的值冷漠、偏好和否决阈值和这项研究的算法可以找到标准重量、参考资料和λ降低水平。通过机器学习整体技术,随机森林,为此,作者姓名研究的方法与ELECTRE树算法。设计/方法/方法首先,作者生成一组ELECTRE Tri-B模型,每个模型解决了一个随机样本的标准交替。有至少两个标准和10%25%的交替。优化的遗传算法(GA)使用一个命令集群或一个任务的例子作为参考的优化。在优化阶段后,两个过程被执行;模型,发现以这种方式elicitated参数和第二过程替代分类(投票)由每个分开模型和多数投票决定最终的类。关于投票过程中,非线性决策边界生成和它们可以合适的分析问题是一样的大自然。线性边界的决定。引出的ELECTRE Tri-B参数由一个整体技术组成的从事的多准则模型生成健壮的解决方案。

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