Anomaly Detection in Hospital Claims Using K-Means and Linear Regression

Hendri Kurniawan Prakosa, N. Rokhman
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引用次数: 0

Abstract

 BPJS Kesehatan, which has been in existence for almost a decade, is still experiencing a deficit in the process of guaranteeing participants. One of the factors that causes this is a discrepancy in the claim process which tends to harm BPJS Kesehatan. For example, by increasing the diagnostic coding so that the claim becomes bigger, making double claims or even recording false claims. These actions are based on government regulations is including fraud. Fraud can be detected by looking at the anomalies that appear in the claim data.This research aims to determine the anomaly of hospital claim to BPJS Kesehatan. The data used is BPJS claim data for 2015-2016. While the algorithm used is a combination of K-Means algorithm and Linear Regression. For optimal clustering results, density canopy algorithm was used to determine the initial centroid.Evaluation using silhouete index resulted in value of 0.82 with number of clusters 5 and RMSE value from simple linear regression modeling of 0.49 for billing costs and 0.97 for  length of stay. Based on that, there are 435 anomaly points out of 10,000 data or 4.35%. It is hoped that with the identification of these, more effective follow-up can be carried out.
基于k均值和线性回归的医院理赔异常检测
成立近十年的BPJS Kesehatan在保障参与者的过程中仍然存在赤字。造成这种情况的因素之一是索赔过程中的差异,这往往会损害BPJS Kesehatan。例如,通过增加诊断编码使权利要求变大,制造双重权利要求甚至记录虚假权利要求。这些行为是基于政府法规的,包括欺诈。可以通过查看索赔数据中出现的异常情况来检测欺诈。本研究旨在确定BPJS Kesehatan的医院理赔异常。使用的数据是BPJS 2015-2016年的索赔数据。而使用的算法是k均值算法和线性回归的结合。为了获得最优聚类结果,采用密度冠层算法确定初始质心。剪影指数的评价结果为0.82,聚类数为5,简单线性回归模型的RMSE值为计费成本0.49,停留时间0.97。以此为基础,1万个数据中有435个异常点(4.35%)。希望随着这些问题的确定,可以进行更有效的后续工作。
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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