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Enhancing Claims Handling Processes with Insurance Based Language Models

机译:加强索赔处理程序与基于保险的语言模型

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Insurance companies manage a large number of claims on a daily basis as new claims are reported and existing claims are serviced. A key component for servicing a claim is the ability for Claims personnel to enter in raw text, aka claims notes. Claims notes contain invaluable information often beyond that of structured data, capturing this information in a machine learning setting offers remarkable benefits to many downstream tasks in a Claims department. The ability to leverage claims notes enables an insurance company not only to make data-driven and insightful decisions while handling claims, but to create value through working more efficiently and serve their customers more effectively. To best leverage the information contained claims notes, we develop insurance-based language models (IBLMs) by further pre-training existing general domain language models (ULMFiT and BERT) on a large number of claim notes with enhanced vocabulary. Furthermore, we tested these IBLMs against three downstream binary classification tasks: (1) identification of auto claims with attorney retention, (2) bodily injury prediction, and (3) auto claims fraud investigation detection. We train different classifiers based on claims notes available on day 1 and through day 10 from when the claim was reported. We found that IBLMs show a significant improvement over the traditional classification approaches. Further, we provide practical insight into how an insurance company might use these models through the analysis of volume (capacity) thresholds.
机译:保险公司管理大量新的索赔报告和现有的索赔服务每天索赔。用于维修要求的一个关键组件是理赔人员在原始文本输入,又名索赔笔记的能力。声明注释中包含了宝贵的信息往往超出了结构化的数据,在一台机器捕获此信息在理赔部门设置学习到许多下游任务提供了非凡的效益。杠杆索赔笔记的能力使保险公司不仅使数据驱动和有见地的决策,同时处理的要求,而是通过提高工作效率,创造价值,更有效地服务客户。最有效地利用信息中包含的权利要求的笔记,我们开发基于保险的语言模型(IBLMs)通过对大量的具有增强的词汇量要求笔记现有通用领域的语言模型(ULMFiT和BERT)进一步前培训。 (1)鉴定具有律师保持汽车要求的方法,(2)的身体伤害预测,以及(3)自动权利要求欺诈调查检测:此外,我们针对三个下游二元分类任务测试了这些IBLMs。我们培养的基础上,从时报告的要求提供第1天,并通过10天索赔注意事项不同的分类。我们发现,IBLMs显示在传统的分类方法一显著的改善。此外,我们还提供实用的深入了解保险公司可能会通过体积(容量)阈值的分析中使用这些模型。

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