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Exceptionally Monotone Models - the Rank Correlation Model Class for Exceptional Model Mining

机译:异单调模型 - 卓越模型挖掘的等级相关模型类

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Exceptional Model Mining strives to find coherent subgroups of the dataset where multiple target attributes interact in an unusual way. One instance of such an investigated form of interaction is Pearson's correlation coefficient between two targets. EMM then finds subgroups with an exceptionally linear relation between the targets. In this paper, we enrich the EMM toolbox by developing the more general rank correlation model class. We find subgroups with an exceptionally monotone relation between the targets. Apart from catering for this richer set of relations, the rank correlation model class does not necessarily require the assumption of target normality, which is implicitly invoked in the Pearson's correlation model class. Furthermore, it is less sensitive to outliers.
机译:卓越的模型挖掘努力查找数据集的连贯子组,其中多个目标属性以异常方式交互。这种研究形式的相互作用的一个实例是Pearson在两个目标之间的相关系数。 EMM然后在目标之间找到具有异常线性关系的子组。在本文中,我们通过开发更一般的等级相关模型类来丰富EMM工具箱。我们在目标之间找到了具有异常单调的子组。除了为此丰富的关系集的迎合之外,等级相关模型类不一定需要假设目标正常性,这在Pearson的相关模型类中隐含地调用。此外,它对异常值不太敏感。

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