Research on integrated learning fraud detection method based on combination classifier fusion (thbagging): A case study on the foundational medical insurance dataset

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Abstract

In recent years, the number of fraud cases in basic medical insurance has increased dramatically. We need to use a more efficient method to identify the fraudulent users. Therefore, we deploy the cloud edge algorithm with lower latency to improve the security and enforceability in the operation process. In this paper, a new feature extraction method and model fusion technology are proposed to solve the problem of basic medical insurance fraud identification. The feature second-level extraction algorithm proposed in this paper can effectively extract important features and improve the prediction accuracy of subsequent algorithms. In order to solve the problem of unbalanced simulation allocation in the medical insurance fraud identification scenario, a sample division method based on the idea of sample proportion equilibrium is proposed. Based on the above methods of feature extraction and sample division, a new training and fitting model fusion algorithm (tree hybrid bagging, THBagging) is proposed. This method makes full use of the balanced idea of the tree model algorithm based on Boosting to fuse, and finally achieves the effect of improving the accuracy of basic medical insurance fraud identification.

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APA

Gong, J., Zhang, H., & Du, W. (2020). Research on integrated learning fraud detection method based on combination classifier fusion (thbagging): A case study on the foundational medical insurance dataset. Electronics (Switzerland), 9(6). https://doi.org/10.3390/electronics9060894

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