Cost-Sensitive Learning for Imbalanced Bad Debt Datasets in Healthcare Industry

Donghui Shi, J. Guan, Jozef Zurada
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引用次数: 9

Abstract

The research using computational intelligence methods to improve bad debt recovery is imperative due to the rapid increase in the cost of healthcare in the U.S. This study explores effectiveness of using cost-sensitive learning methods to classify the unknown cases in imbalanced bad debt datasets and compares the results with those of two other methods: undersampling and oversampling, often used in processing imbalanced datasets. The study also analyzes the function of a semi-supervised learning algorithm in different circumstances. The results show that although the predictive accuracy rates with oversampling in balanced testing datasets is the best, it is unpractical due to the existence of imbalanced classes in real healthcare situations. The models constructed by undersampling have high classification accuracy rates of the minority class in imbalanced datasets, but they tend to make the overall classification accuracy rates of the majority class worse. The results show that cost-sensitive learning methods can improve the classification accuracy rates of the minority class in imbalanced datasets while achieving considerably good overall classification accuracy rates and classification accuracy rates of majority class. The results and analysis in this study show that cost-sensitive learning methods provide a potentially viable approach to classify the unknown cases in imbalanced bad debt datasets. At last, more practical predictive results are obtained by using the models to predict the unlabeled cases. Although oversampling and the cost-sensitive learning methods with the semi-supervised learning can improve the overall and majority class classification accuracy rates, the minority class classification accuracy rates are still relatively low. The semi-supervised learning algorithms need to be improved to adapt to the imbalanced bad debt datasets.
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医疗保健行业不平衡坏账数据集的成本敏感学习
由于美国医疗保健成本的快速增长,使用计算智能方法改善坏账回收的研究势在必行。本研究探讨了使用成本敏感学习方法对不平衡坏账数据集中未知案例进行分类的有效性,并将结果与另外两种方法进行了比较:欠采样和过采样,这两种方法通常用于处理不平衡数据集。研究还分析了半监督学习算法在不同情况下的功能。结果表明,虽然在平衡测试数据集中,过采样的预测准确率是最好的,但由于不平衡类的存在,在实际医疗情况下,它是不实用的。欠采样构建的模型在不平衡数据集中对少数类具有较高的分类准确率,但往往会使多数类的整体分类准确率变差。结果表明,代价敏感学习方法可以提高不平衡数据集中少数类的分类准确率,同时获得较好的总体分类准确率和多数类的分类准确率。本研究的结果和分析表明,成本敏感学习方法提供了一种潜在可行的方法来分类不平衡坏账数据集中的未知案例。最后,利用该模型对未标记情况进行预测,得到了更实用的预测结果。虽然过采样和半监督学习的代价敏感学习方法可以提高整体和大多数类的分类准确率,但少数类的分类准确率仍然相对较低。半监督学习算法需要改进以适应不平衡坏账数据集。
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