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Local Modelling in Classification on Different Feature Subspaces

机译:不同特征子空间分类中的本地建模

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Sometimes one may be confronted with classification problems where classes are constituted of several subclasses that possess different distributions and therefore destroy accurate models of the entire classes as one similar group. An issue is modelling via local models of several subclasses. In this paper, a method is presented of how to handle such classification problems where the subclasses are furthermore characterized by different subsets of the variables. Situations are outlined and tested where such local models in different variable subspaces dramatically improve the classification error.
机译:有时,人们可能会面对分类问题,其中类由具有不同分布的多个子类构成,因此将整个类的准确模型作为一个类似的组。问题是通过多个子类的本地模型建模。在本文中,提出了一种方法如何处理这些分类问题,其中子类别的特征在于变量的不同子集。概述和测试的情况,其中不同变量子空间中的此类本地模型显着提高了分类错误。

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