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Modeling assignment-based pairwise comparisons within integrated framework for value-driven multiple criteria sorting

机译:在集成框架内对基于赋值的成对比较进行建模,以实现价值驱动的多条件分类

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摘要

We introduce a new preference disaggregation modeling formulations for multiple criteria sorting with a set of additive value functions. The preference information supplied by the Decision Maker (DM) is composed of: (1) possibly imprecise assignment examples, (2) desired class cardinalities, and (3) assignment-based pairwise comparisons. The latter have the form of imprecise statements referring to the desired assignments for pairs of alternatives, but without specifying any concrete class. Additionally, we account for preferences concerning the shape of the marginal value functions and desired comprehensive values of alternatives assigned to a given class or class range. The exploitation of all value functions compatible with these preferences results in three types of results: (1) necessary and possible assignments, (2) extreme class cardinalities, and (3) necessary and possible assignment-based preference relations. These outputs correspond to different types of admitted preference information. By exhibiting different outcomes, we encourage the DM in various ways to enrich her/his preference information interactively. The applicability of the framework is demonstrated on data involving the classification of cities into liveability classes. (C) 2014 Elsevier B.V. All rights reserved.
机译:我们介绍了一种新的偏好分解建模公式,用于使用一组附加值函数对多个条件进行排序。决策者(DM)提供的偏好信息包括:(1)可能不精确的分配示例,(2)所需的类别基数,以及(3)基于分配的成对比较。后者具有不精确语句的形式,该语句引用了成对的替代方案的期望分配,但未指定任何具体类。此外,我们考虑了与边际值函数的形状有关的偏好以及分配给给定类别或类别范围的替代项的期望综合值。与这些首选项兼容的所有价值函数的利用产生三种类型的结果:(1)必要和可能的分配,(2)极端阶级基数,以及(3)必要和可能的基于分配的偏好关系。这些输出对应于不同类型的允许的偏好信息。通过展示不同的结果,我们鼓励DM以各种方式交互式地丰富她/他的偏好信息。该框架的适用性在涉及将城市分类为宜居性类别的数据上得到证明。 (C)2014 Elsevier B.V.保留所有权利。

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