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Adaptive weighted learning for unbalanced multicategory classification.

机译:不平衡多类别分类的自适应加权学习。

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摘要

In multicategory classification, standard techniques typically treat all classes equally. This treatment can be problematic when the dataset is unbalanced in the sense that certain classes have very small class proportions compared to others. The minority classes may be ignored or discounted during the classification process due to their small proportions. This can be a serious problem if those minority classes are important. In this article, we study the problem of unbalanced classification and propose new criteria to measure classification accuracy. Moreover, we propose three different weighted learning procedures, two one-step weighted procedures, as well as one adaptive weighted procedure. We demonstrate the advantages of the new procedures, using multicategory support vector machines, through simulated and real datasets. Our results indicate that the proposed methodology can handle unbalanced classification problems effectively.
机译:在多类别分类中,标准技术通常平等地对待所有类别。当数据集不平衡时,如果某些类别与其他类别相比具有非常小的类别比例,则这种处理可能会出现问题。由于少数群体的比例很小,在分类过程中可能会忽略或打折扣。如果这些少数群体很重要,那么这可能是一个严重的问题。在本文中,我们研究了不平衡分类的问题,并提出了衡量分类准确性的新标准。此外,我们提出了三种不同的加权学习过程,两种单步加权过程以及一种自适应加权过程。我们通过模拟和真实数据集,使用多类别支持向量机论证了新程序的优势。我们的结果表明,所提出的方法可以有效地处理不平衡分类问题。

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