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Imbalanced Classification Problems: Systematic Study and Challenges in Healthcare Insurance Fraud Detection

机译:不平衡的分类问题:医疗保险欺诈检测中的系统研究和挑战

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The recent developments made in the data mining technologies have greatly influenced the data classification process. The growth of applications has increased the volume of the data and thus, the classification task becomes quite complex. Due to the uncertainties and unbounded nature of the data, class imbalance is one of the significant issues which determine the performance of the classifiers. In this paper, we present the challenges of the imbalanced classifications in the healthcare insurance claiming frauds. Most classification algorithms make use of majority class by ignoring the minority class. There are different approaches available to deal with the imbalance datasets which is reviewed in this study. A systematic study is done on each approach which presents the challenges pertaining in the class imbalance issues.
机译:最近在数据挖掘技术方面的发展极大地影响了数据分类过程。 应用程序的增长增加了数据的体积,因此,分类任务变得非常复杂。 由于数据的不确定性和无限性,类别不平衡是确定分类器性能的重要问题之一。 在本文中,我们展示了医疗保险保险欺诈中不平衡分类的挑战。 大多数分类算法通过忽略少数阶级来利用多数类。 可以在本研究中审查的不平衡数据集有不同的方法可供使用。 对每个方法进行了系统研究,呈现了在类别不平衡问题中有关的挑战。

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