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An indirect elicitation method for the parameters of the ELECTRE TRI-nB model using genetic algorithms

机译:使用遗传算法的电验三NB模型参数的间接诱导方法

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Indirect approaches for eliciting preference model parameters for multiple criteria decision aiding are of growing interest because they imply relatively less cognitive effort from the decision-maker (DM). Direct approaches are particularly hard in the case of the new ELECTRE TRI-nB method, because the task involves eliciting a number of limiting profiles for each category boundary. However, in ELECTRE methods, the simultaneous inference of the whole set of parameters needs the construction and resolution of a non-linear non-convex programming problem, which is typically very hard to solve. Therefore, an evolutionary-based method to infer the parameters of the ELECTRE TRI-nB model is proposed in this paper. The quality of the solutions is tested by measuring the capacity to restore the assignment examples and the capacity to make consistent assignments of new actions. In extensive computer experiments, using the pseudo-conjunctive assignment procedure, some main conclusions arise: (i) the capacity of the method to restore the training examples reaches high values, mainly with three and five limiting profiles per category; and (ii) the capacity to make appropriate assignments of new actions (not belonging to the training information) can be greatly improved by increasing the number of limiting profiles. (C) 2019 Elsevier B.V. All rights reserved.
机译:诱使多个标准决策的偏好模型参数的间接方法,同意令人生意的感兴趣,因为它们意味着从决策者(DM)中的认知努力相对较少。在新的Electre Tri-NB方法的情况下,直接方法特别困难,因为任务涉及引出每个类别边界的许多限制性配置文件。然而,在电弧方法中,整个参数的同时推断需要构造和分辨率的非线性非凸编程问题,这通常很难解决。因此,本文提出了一种推断电流三NB模型参数的基于进化的方法。通过测量恢复分配示例的能力和制作新动作的一致分配的能力来测试解决方案的质量。在广泛的计算机实验中,使用伪联合分配程序,出现一些主要结论:(i)恢复训练示例的方法的能力达到高值,主要是每类别的三个和五个限制性曲线; (ii)通过增加限制简档的数量,可以大大提高对新行动进行适当分配的能力(不属于培训信息)。 (c)2019年Elsevier B.V.保留所有权利。

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