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Learning criteria weights of an optimistic Electre Tri sorting rule

机译:乐观的Electre Tri排序规则的学习标准权重

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Multiple criteria sorting methods assign alternatives to predefined ordered categories taking multiple criteria into consideration. The Electre Tri method compares alternatives to several profiles separating the categories. Based on such comparisons, each alternative is assigned to the lowest (resp. highest) category for which it is at least as good as the lower profile (resp. is strictly preferred by the higher profile) of the category, and the corresponding assignment rule is called pessimistic (resp. optimistic). We propose algorithms for eliciting the criteria weights and majority threshold in a version of the optimistic Electre Tri rule, which raises additional difficulties w.r.t. the pessimistic rule. We also describe an algorithm that computes robust alternatives' assignments from assignment examples. These algorithms proceed by solving mixed integer programs. Several numerical experiments are conducted to test the proposed algorithms on the following issues: learning ability of the algorithm to reproduce the DM's preference, robustness analysis and ability to identify conflicting preference information in case of inconsistencies in the learning set Experiments show that eliciting the criteria weights in an accurate way requires quite a number of assignment examples. Furthermore, considering more criteria increases the information requirement. The present empirical study allows us to draw some lessons in view of practical applications of Electre Tri using the optimistic rule.
机译:多种条件分类方法考虑到多种条件,将替代物分配给预定义的有序类别。 Electre Tri方法将替代方法与几个将类别分开的配置文件进行比较。基于这样的比较,每个备选方案都被分配到最低(分别为最高)类别,该类别至少应与该类别的最低配置文件(最高配置文件严格首选)相对应,并具有相应的分配规则称为悲观(分别为乐观)。我们提出了一种算法,用于在一种乐观的Electre Tri规则版本中引发标准权重和多数阈值,这给w.r.t.悲观的规则。我们还描述了一种根据分配示例计算健壮的替代方案分配的算法。这些算法通过求解混合整数程序来进行。进行了一些数值实验,对以下问题进行了测试:算法的学习能力以再现DM的偏好,鲁棒性分析以及在学习集不一致的情况下识别冲突偏好信息的能力实验表明,得出标准权重以准确的方式需要大量的分配示例。此外,考虑更多标准会增加信息需求。本实证研究使我们可以使用乐观规则,从Electre Tri的实际应用中吸取一些教训。

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