解决阶级失衡问题的资源优化新框架

K. Raghavendar, Isha Batra, Arun Malik
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引用次数: 0

摘要

在现实世界中,人工智能正被用来解决阶级不平等问题。当信息不仅是不平衡的,而且是多维的时候,这一点尤其正确。当存在类不平衡时,数据集的维数总是很大,这两个困难必须同时考虑。当使用示例来评估每个组件时,标准的元素选择算法通常为来自不同类的测试提供相同的权重。因此,它们无法有效地处理不平衡的数据。当不同类别的错误分类成本不同时,通常使用具有成本效益的学习过程。为处理与课堂不适有关的问题,制定了不同的书面程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel Framework for Resources Optimization to Solve Class Imbalance Problems
In the actual world, AI is being used to address issues of class inequality. This is especially true when the information is not just unbalanced, but also multidimensional. When there is a class imbalance, a large dimensionality of datasets is always present, and both difficulties must be considered jointly. When using examples to evaluate each component, standard element picking algorithms usually provide equal weights to tests from different classes. As a result, they are unable to operate effectively with unbalanced data. When the costs of misclassification of different classes are different, cost-effective learning procedures are typically used. Different processes in writing have been established to deal with concerns related to class discomfort.
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