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Super-class Discriminant Analysis: A novel solution for heteroscedasticity

机译:超级判别分析:异方差性的新解决方案

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摘要

The heteroscedasticity problem is a great challenge in pattern recognition, particularly in statistics-based methods. The traditional method that is mainly used to solve this problem is heteroscedastic Discriminant Analysis. In this study, we propose a novel solution to the problem, called Super-class Discriminant Analysis (SCDA). Our method uses the "divide and conquer" methodology to partition the heteroscedastic dataset into super-classes with reduced heteroscedasticity and models them separately. Theoretically, a super-class should contain a set of classes having the same within-class variation. In practice, a heteroscedastic dataset can be coarsely divided into several super-classes based on certain semantic criteria such as gender or race. We evaluate our method with toy data and three real-world datasets, which can be divided into super-classes according to gender and race. Experimental results indicate that the proposed method can effectively resolve the problem of heteroscedasticity.
机译:异方差问题是模式识别中的一个巨大挑战,特别是在基于统计的方法中。主要用于解决此问题的传统方法是异方差判别分析。在这项研究中,我们提出了一种解决该问题的新方法,称为超类判别分析(SCDA)。我们的方法使用“分而治之”的方法将异方差数据集划分为具有降低的异方差性的超类,并分别对其进行建模。从理论上讲,超类应包含一组具有相同类内变化的类。实际上,可以根据某些语义标准(例如性别或种族)将异方差数据集粗略地分为几个超类。我们使用玩具数据和三个真实世界的数据集评估我们的方法,根据性别和种族将其分为超类。实验结果表明,该方法可以有效解决异方差问题。

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