Deep Learning for Fraud Prediction in Preauthorization for Health Insurance

Aishat Salau, Prof. Nwojo Agwu Nnanna, Prof. Moussa, Moussa
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Abstract

Health insurance fraud remains a global menace despite the controls implemented to address it; one of such controls is preauthorization. Although, preauthorization promises reduction in fraud, waste and abuse in healthcare, it places undue administrative burden on healthcare service providers and delay in patient care. This limitation has not been thoroughly explored by works of literature in the machine learning domain. In this work, a deep learning model is proposed to learn the preauthorization process for fraud prevention in health insurance for improved process efficacy. In detail, a de-identified HMO preauthorization dataset is used for training the Long Short- Term Memory (LSTM) network. To address class imbalance and avoid data overfitting, the proposed approach utilizes random oversampling and dropout techniques respectively. The experimental results reveal that the proposed model can effectively learn preauthorization request patterns while offering a fraud detection accuracy rate of over 90% with a 2-4% improvement rate in accuracy when compared with previous techniques based on conventional machine learning techniques. The proposed technique is capable of detecting anomalous preauthorization requests based on medical necessity.
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深度学习在健康保险预授权欺诈预测中的应用
尽管实施了控制措施,但医疗保险欺诈仍然是一个全球性威胁;其中一种控制是预授权。尽管预先授权有望减少医疗保健中的欺诈、浪费和滥用,但它给医疗保健服务提供商带来了不必要的行政负担,并延误了患者护理。机器学习领域的文献还没有对这个限制进行彻底的探讨。在这项工作中,提出了一个深度学习模型来学习医疗保险预防欺诈的预授权过程,以提高过程效率。详细地说,一个去识别的HMO预授权数据集被用于训练长短期记忆(LSTM)网络。为了解决类不平衡和避免数据过拟合,该方法分别采用随机过采样和dropout技术。实验结果表明,该模型可以有效地学习预授权请求模式,同时提供超过90%的欺诈检测准确率,与基于传统机器学习技术的先前技术相比,准确率提高2-4%。该技术能够检测基于医疗需要的异常预授权请求。
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