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Learning the Parameters of a Non Compensatory Sorting Model

机译:学习非补偿性分拣模型的参数

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We consider a multicriteria sorting procedure based on a majority rule, called MR-Sort. This procedure allows to sort each object of a set, evaluated on multiple criteria, in a category selected among a set of pre-defined and ordered categories. With MR-Sort, the ordered categories are separated by profiles which are vectors of performances on the different attributes. Using the MR-Sort rule, an object is assigned to a category if it is at least as good as the category lower profile and not better than the category upper profile. To determine whether an object is as good as a profile, the weights of the criteria on which the object performances are better than the profile performances are summed up and compared to a threshold. If the sum of weights is at least equal to the threshold, then the object is considered at least as good as the profile. In view of increasing the expressiveness of the model, we substitute additive weights by a capacity to represent the power of coalitions of criteria. This corresponds to the Non-Compensatory Sorting model characterized by Bouyssou and Marchant. In the paper we describe a mixed integer program and a heuristic algorithm that enable to learn the parameters of this model from assignment examples.
机译:我们考虑基于大多数规则的多轨道分类过程,称为MR-Sort。此过程允许在一组预定义和有序类别中选择的类别中对多个条件进行评估的集合的每个对象。使用MR-Sort,订购类别由配置文件分隔,这些配置文件是不同属性上的性能的载体。使用MR-Sort Rure,如果它至少与类别更好的分类,则将对象分配给类别,而不是比类别更好的上述配置文件更好。为了确定对象是否与轮廓一样好,对象性能优于轮廓性能的标准的权重,并与阈值进行比较。如果权重和至少等于阈值,则该对象至少被视为简档。鉴于提高模型的表现力,我们通过代表标准联盟的力量来替代添加剂权重。这对应于由Bouysou和Marchant特征的非补偿分类模型。在本文中,我们描述了一种混合整数程序和启发式算法,可以从分配示例中学习该模型的参数。

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