Anomaly Detection of Hospital Claim Using Support Vector Regression

Luthfia Nurma Hapsari, Nur Rokhman
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Abstract

BPJS Kesehatan plays a crucial role in providing affordable access to healthcare services and reducing individual financial burdens. However, deficit issues can disrupt the sustainability of the program, making anomaly detection highly important to conduct. Previous research on unsupervised anomaly detection in BPJS Kesehatan revealed a limitation with Simple Linear Regression (SLR), which only accommodates linear relationships among independent variables and the target variable of BPJS Kesehatan claim values. Minister of Health Regulation No. 52 of 2016 identified eight influential non-linear independent variables, leading to the proposal of Support Vector Regression (SVR) to address SLR's shortcomings.Research findings demonstrate SVR's superior anomaly detection performance over SLR. Interestingly, the SVR model excels in anomaly detection but lacks in prediction. Optimal tuning of SVR hyperparameters (C=9, epsilon=90, gamma=0.009, residual anomaly definition > 0.5*RMSE for both datasets) yields impressive metrics: Accuracy=0.97, Precision=0.84, Recall=0.97, and F1-Score=0.90. The anomaly detection results are expected to greatly support the sustainability of the BPJS Kesehatan program in Indonesia.
利用支持向量回归检测医院报销单的异常情况
BPJS Kesehatan 在提供负担得起的医疗保健服务和减轻个人经济负担方面发挥着至关重要的作用。然而,赤字问题可能会破坏计划的可持续性,因此进行异常检测非常重要。此前对 BPJS Kesehatan 中无监督异常检测的研究表明,简单线性回归(SLR)存在局限性,它只能在自变量和目标变量(BPJS Kesehatan 索赔值)之间建立线性关系。卫生部长 2016 年第 52 号法规确定了八个有影响力的非线性自变量,从而提出了支持向量回归(SVR)来解决 SLR 的不足。有趣的是,SVR 模型在异常检测方面表现出色,但在预测方面却乏善可陈。SVR 超参数的优化调整(C=9,ε=90,gamma=0.009,两个数据集的残差异常定义均大于 0.5*RMSE)产生了令人印象深刻的指标:准确度=0.97,精确度=0.84,召回率=0.97,F1-分数=0.90。异常检测结果有望极大地支持印度尼西亚 BPJS Kesehatan 计划的可持续发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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