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Robust Ordinal Regression for Dominance-based Rough Set Approach to multiple criteria sorting

机译:基于优势的粗糙集方法的稳健序数回归对多准则排序

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We present a new multiple criteria sorting method deriving from Dominance-based Rough Set Approach (DRSA). The preference information supplied by the Decision Maker (DM) is a set of possibly imprecise and inconsistent assignment examples on a subset of reference alternatives relatively well-known to the DM. To structure the data we use DRSA, and subsequently, represent the assignment examples by all minimal sets of rules covering all alternatives from the lower approximations of class unions. Such a set of rules is called minimal-cover set – it is one of the instances of the preference model compatible with DM's preference information. In this way, we implement the principle of Robust Ordinal Regression (ROR) to decision rule preference model. For each alternative, we derive the necessary and possible assignments specifying the range of classes to which the alternative is assigned by all or at least one compatible set of rules, respectively, as well as class acceptability indices. We also introduce the notion of a representative compatible minimal-cover set of rules whose selection builds on the results of ROR, addressing the robustness concern. Application of the approach is demonstrated by classifying 69 land zones in 4 classes representing different risk levels.
机译:我们提出了一种新的多准则排序方法,该方法源自基于优势的粗糙集方法(DRSA)。决策者(DM)提供的偏好信息是DM相对众所周知的参考备选方案的子集中的一组可能不精确且不一致的分配示例。为了构造数据,我们使用DRSA,然后使用所有最小规则集(代表类联合的较低近似中的所有替代)来表示分配示例。这样的一组规则称为最小覆盖集-它是与DM的偏好信息兼容的偏好模型的实例之一。通过这种方式,我们将鲁棒序数回归(ROR)原则应用于决策规则偏好模型。对于每个备选方案,我们都得出了必要的和可能的分配,这些值指定了分别由所有或至少一个兼容的一组规则将备选方案分配给的类别的范围,以及类别可接受性指标。我们还介绍了具有代表性的兼容最小覆盖规则集的概念,该规则集的选择基于ROR的结果,从而解决了健壮性问题。通过将代表不同风险水平的4个类别的69个陆地区域进行分类,证明了该方法的应用。

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