Robust Ordinal Regression

S. Greco, R. Słowiński, J. Figueira, V. Mousseau
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引用次数: 124

Abstract

Within disaggregation–aggregation approach, ordinal regressionaims at inducing parameters of a preference model, for example, parameters of a value function, which represent some holistic preference comparisons of alternatives given by the Decision Maker (DM). Usually, from among many sets of parameters of a preference model representing the preference information given by the DM, only one specific set is selected and used to work out a recommendation. For example, while there exist many value functions representing the holistic preference information given by the DM, only one value function is typically used to recommend the best choice, sorting, or ranking of alternatives. Since the selection of one from among many sets of parameters compatible with the preference information given by the DM is rather arbitrary, robust ordinal regressionproposes taking into account all the sets of parameters compatible with the preference information, in order to give a recommendation in terms of necessary and possible consequences of applying all the compatible preference models on the considered set of alternatives. In this chapter, we present the basic principle of robust ordinal regression, and the main multiple criteria decision methods to which it has been applied. In particular, UTA GMS and GRIPmethods are described, dealing with choice and ranking problems, then UTADIS GMS , dealing with sorting (ordinal classification) problems. Next, we present robust ordinal regression applied to Choquet integral for choice, sorting, and ranking problems, with the aim of representing interactions between criteria. This is followed by a characterization of robust ordinal regression applied to outranking methods and to multiple criteria group decisions. Finally, we describe an interactive multiobjective optimization methodology based on robust ordinal regression, and an evolutionary multiobjective optimization method, called NEMO, which is also using the principle of robust ordinal regression.
稳健有序回归
在分解-聚集方法中,序数回归的目的是诱导偏好模型的参数,例如价值函数的参数,这些参数代表了决策者(DM)给出的备选方案的一些整体偏好比较。通常,从表示DM给出的偏好信息的偏好模型的许多参数集中,只选择一个特定的集并用于制定推荐。例如,虽然存在许多值函数表示DM给出的整体偏好信息,但通常只有一个值函数用于推荐最佳选择、排序或对备选方案进行排序。由于从与DM给出的偏好信息兼容的众多参数集中选择一个参数集是相当任意的,稳健有序回归建议考虑与偏好信息兼容的所有参数集,以便根据将所有兼容的偏好模型应用于考虑的备选集的必要和可能的后果给出建议。在本章中,我们介绍了稳健有序回归的基本原理,以及它所应用的主要多准则决策方法。首先介绍了处理选择和排序问题的UTA GMS和grip方法,然后介绍了处理排序(有序分类)问题的UTADIS GMS方法。接下来,我们提出稳健有序回归应用于Choquet积分的选择、排序和排序问题,目的是表示标准之间的相互作用。这是随后的特征稳健有序回归应用于排名方法和多标准群体决策。最后,我们描述了一种基于鲁棒有序回归的交互式多目标优化方法,以及一种同样利用鲁棒有序回归原理的进化多目标优化方法NEMO。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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