正诊断过程二部图上使用距离池的负保险索赔生成

Md Enamul Haque, M. E. Tozal
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引用次数: 0

摘要

健康和医疗保险领域的阴性样本是指欺诈性或错误的保险索赔,可能包括与医疗编码系统相关的不一致的诊断-程序关系。不幸的是,只有少数数据集是公开可用于研究的健康保险领域,但没有报告任何负面索赔。然而,负面索赔不仅对于开发新的机器学习方法至关重要,而且对于测试和验证保险提供商部署的自动化人工智能系统也至关重要。在本研究中,我们引入了一个基于正索赔的二部图表示的综合负索赔生成程序。我们的实证结果展示了有希望的结果,将改善医疗保健中机器学习方法的开发和评估过程,其中需要负样本,但无法获得。此外,所提出的方案可以应用于其他有意义的二部图表示和缺乏负样本的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Negative Insurance Claim Generation Using Distance Pooling on Positive Diagnosis-Procedure Bipartite Graphs
Negative samples in health and medical insurance domain refer to fraudulent or erroneous insurance claims that may include inconsistent diagnosis-procedure relations with respect to a medical coding system. Unfortunately, only a few datasets are publicly available for research in health insurance domain, yet none reports any negative claims. However, negative claims are essential not only to develop new machine learning approaches but also to test and validate automated artificial intelligence systems deployed by insurance providers. In this study, we introduce a synthetic negative claim generation procedure based on the bipartite graph representations of positive claims. Our empirical results demonstrate promising outcomes that will improve the development and evaluation processes of machine learning approaches in healthcare, where negative samples are required, but not available. Moreover, the proposed scheme can be applied to other domains, where bipartite graph representations are meaningful and negative samples are lacking.
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