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Contingent preference disaggregation model for multiple criteria sorting problem

机译:多个标准分类问题的偶然偏好分类模型

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The conventional preference disaggregation approaches for multiple criteria sorting aim at reconstructing an entire set of assignment examples provided by a Decision Maker (DM) with a single preference model instance. In case the DM's holistic preference information is not consistent with an assumed model, one needs to accept that some assignment examples are not reproduced. We propose a new approach for handling inconsistency in the context of a threshold-based value-driven sorting procedure. Specifically, we introduce preference disaggregation methods for reconstructing all assignment examples with a set of complementary preference models. The proposed approach builds on the assumption that the importance of particular criteria or, more generally, the shape of marginal value functions and their maximal shares in the comprehensive value are contingent (i.e., dependent) on the performance profile of a given alternative. Therefore, in case of inconsistency, the set of assignment examples is divided into subsets, each of which is reconstructed by a unique model to be used only if certain circumstances are valid. We present three methods for learning a set of contingent models, allowing different degrees of variation in the contingent models along two dimensions: the shape of marginal value functions and interrelations between the models. To apply such a set for classification of non-reference alternatives, we learn a decision tree which makes the application of a given model dependent on the alternatives' profiles represented by the performances on particular criteria, hence allowing to select an appropriate model among the competing models to evaluate a non-reference alternative. The method's applicability is demonstrated on a problem of evaluating research units representing different fields of science. (C) 2019 Elsevier B.V. All rights reserved.
机译:常规偏爱分解为多个标准中的重构整个组由决策者(DM)与单个偏好模型实例提供分配例的排序目的接近。在DM的整体偏好信息与假定模型不一致的情况下,需要接受未复制某些分配示例。我们提出了一种在基于阈值的值驱动排序过程的上下文中处理不一致的新方法。具体地,我们介绍用于重建所有互补偏好模型的所有分配示例的优先分类方法。所提出的方法假设特定标准的重要性或更普遍地,在综合价值中的边际价值函数的形状及其最大股份的形状在给定的替代方案的性能简介上取决于(即,I.。,依赖于依赖)。因此,在不一致的情况下,该组分配的例子被分成子集,其中的每一个由唯一模型重构仅当某些情况下是有效的使用。我们提出了三种学习一组偶然模型的方法,沿着两个维度允许不同的模型中不同程度的变化:边缘值功能的形状和模型之间的相互关系。为了应用非参考替代方案的分类,我们学习一个决策树,该决策树依赖于由特定标准的性能所表示的替代方案的应用,从而允许在竞争中选择适当的模型用于评估非参考替代方案的模型。该方法的适用性是关于评估代表不同科学领域的研究单位的问题。 (c)2019 Elsevier B.v.保留所有权利。

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