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Sequence embeddings help to identify fraudulent cases in healthcare insurance

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arxiv 1910.03072 v1 pith:PLHYIKE3 submitted 2019-10-07 cs.LG cs.CRstat.ML

Sequence embeddings help to identify fraudulent cases in healthcare insurance

classification cs.LG cs.CRstat.ML
keywords fraudulentinsuranceclaimsdatamethodshealthhelptext
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Fraud causes substantial costs and losses for companies and clients in the finance and insurance industries. Examples are fraudulent credit card transactions or fraudulent claims. It has been estimated that roughly $10$ percent of the insurance industry's incurred losses and loss adjustment expenses each year stem from fraudulent claims. The rise and proliferation of digitization in finance and insurance have lead to big data sets, consisting in particular of text data, which can be used for fraud detection. In this paper, we propose architectures for text embeddings via deep learning, which help to improve the detection of fraudulent claims compared to other machine learning methods. We illustrate our methods using a data set from a large international health insurance company. The empirical results show that our approach outperforms other state-of-the-art methods and can help make the claims management process more efficient. As (unstructured) text data become increasingly available to economists and econometricians, our proposed methods will be valuable for many similar applications, particularly when variables have a large number of categories as is typical for example of the International Classification of Disease (ICD) codes in health economics and health services.

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  1. Semantic insurance pricing with large language models

    stat.AP 2026-06 unverdicted novelty 6.0

    LLM embeddings from policy text outperform hand-engineered features in a GLM for French motor insurance claim frequency, with larger gains at small sample sizes and further improvement from insurance-specific fine-tuning.