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Noncrossing ordinal classification

机译:非交叉序数分类

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Ordinal data are often seen in real applications. Regular multicategory classification methods are not designed for this data type and a more proper treatment is needed. We consider a framework of ordinal classification which pools the results from binary classifiers together. An inherent difficulty of this framework is that the class prediction can be ambiguous due to boundary crossing. To fix this issue, we propose a noncrossing ordinal classification method which materializes the framework by imposing noncrossing constraints. An asymptotic study of the proposed method is conducted. We show by simulated and data examples that the proposed method can improve the classification performance for ordinal data without the ambiguity caused by boundary crossings.
机译:序数数据经常出现在实际应用中。常规的多类别分类方法不适用于此数据类型,因此需要更适当的处理。我们考虑序数分类的框架,该框架将二进制分类器的结果汇总在一起。该框架的固有困难是类别预测由于边界交叉而可能是不明确的。为了解决此问题,我们提出了一种非交叉序数分类方法,该方法通过施加非交叉约束来实现框架。对该方法进行了渐近研究。我们通过仿真和数据实例表明,该方法可以提高序数数据的分类性能,而不会因边界交叉而产生歧义。

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