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Approximating incompletely defined utility functions of qualitative multi-criteria modeling method DEX

机译:近似定性多标准建模方法DEX的未完全定义的实用功能

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摘要

Decision analysis is aimed at supporting people who make decisions in order to satisfy their needs and objectives. The method called DEX is a qualitative multi-criteria decision analysis approach that provides support to decision makers in evaluating and choosing decision alternatives by using discrete attributes and rule-based utility functions. In this work, we extend our previous efforts of approximating complete, monotone DEX utility functions with methods Direct marginals, UTADIS and Conjoint analysis to incompletely defined utility functions. The experiments are performed both on functions obtained by solving real world decision making problems and on artificially created ones. The results show that all three methods provide accurate approximations of incompletely defined DEX utility functions, when the evaluation is done only on rules present in these incompletely defined functions. Among the three methods, the Conjoint analysis method generally has the best performance, however it is closely followed by the Direct marginals method. The Conjoint analysis method also achieves a better performance in approximating fully defined DEX utility functions by using incompletely defined instances of those functions. The UTADIS method performs comparatively well with functions having a high percentage of missing values.
机译:决策分析旨在支持做出决定的人,以满足他们的需求和目标。称为DEX的方法是一个定性的多标准决策分析方法,它通过使用离散属性和基于规则的实用程序函数来为决策者提供对决策者的支持。在这项工作中,我们扩展了以前的近似完整的单调DEX实用程序功能,使用方法直接边缘,UTADIS和CONNOINT分析到未完全定义的实用程序功能。通过解决现实世界决策和人工创造的函数来进行实验。结果表明,所有三种方法都提供了对未完全定义的DEX实用程序功能的准确近似值,当时仅在这些未完整的函数中存在的规则上进行评估时。在三种方法中,联合分析方法通常具有最佳性能,但它紧随其后的直接边缘方法。 CONGOINT分析方法还通过使用这些功能的未完整定义的实例近似完全定义的DEX实用程序功能来实现更好的性能。 UTADIS方法对具有高缺失值百分比的函数进行相对较好。

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