Fraud has led to a huge addition of expenses in health insurance sector in India. The work is aimed to provide methods applied to health insurance fraud detection. The work presents two approaches - a markov model and an improved markov model using gradient boosting method in health insurance claims. The dataset 382,587 claims of which 38,082 claims are fraudulent. The markov based model gave the accuracy of 94.07% with F1-score at 0.6683. However, the improved markov model performed much better in comparison with the accuracy of 97.10% and F1-score of 0.8546. It was observed that the improved markov model gave much lower false positives compared to markov model.
翻译:这项工作提出了两种办法:一种是马克罗夫模式,一种是采用梯度加速法改进的马克罗夫模式,在健康保险索赔中采用梯度加速法改进的马克罗夫模式,其中382,587项索赔为欺诈性索赔,其中38,082项索赔为欺诈性索赔,以马克罗夫为基础的模式给出了94.07%的准确率,F1芯号为0.6683,但是,改进的马克罗夫模式比97.10%的准确率好得多,F1芯号为0.8546,据观察,改进的马克罗夫模式提供的假阳性比马克罗夫模式低得多。