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Embedding for Anomaly Detection on Health Insurance Claims

机译:嵌入用于健康保险索赔的异常检测

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Properly analyzing health insurance claims data could lead to significant business insights and benefits for health service providers and insurance companies. Yet, health insurance data is often high dimensional and contains complex interleave sequences of claims. Instead of conducting machine learning tasks directly on the raw data, a better approach is performing the tasks on high-quality embeddings of the raw data. Driven by the real business need of Solution Segic Inc., a Canadian technology company in the group insurance industry, we extract health insurance claims embeddings with neural networks in the context of anomaly detection. We propose and thoroughly examine six embedding components that are customized based on different possible assumptions made on the data. One of our proposed embedding components, EC-ReStepRec, significantly outperforms other candidates on two anomaly detection tasks. This is the first embedding study done on health insurance claims for anomaly detection.
机译:适当地分析健康保险理赔数据可以为健康服务提供商和保险公司带来重要的业务见解和收益。然而,健康保险数据通常是高维的,并且包含复杂的索赔交织序列。与其直接在原始数据上执行机器学习任务,不如说是一种更好的方法,它是在原始数据的高质量嵌入上执行任务。在集体保险行业中的加拿大技术公司Solution Segic Inc.的实际业务需求的驱动下,我们在异常检测的背景下使用神经网络提取健康保险索赔嵌入。我们提议并彻底检查了六个嵌入组件,这些组件是根据对数据做出的不同可能假设而定制的。我们建议的嵌入组件之一EC-ReStepRec在两项异常检测任务上明显优于其他候选组件。这是针对健康保险索赔进行异常发现的第一项嵌入研究。

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