Health insurance helps people to obtain quality and affordable health services. The claim billing process is manually input code to the system, this can lack of errors and be suspected of being fraudulent. Claims suspected of fraud are traced manually to find incorrect inputs. The increasing volume of claims causes a decrease in the accuracy of tracing claims suspected of fraud and consumes time and energy. As an effort to prevent and reduce the occurrence of fraud, this study aims to determine the pattern of data on the occurrence of fraud based on the formation of data groupings. Data was prepared by combining claims for inpatient bills and patient bills from hospitals in 2020. Two methods were used in this study to form clusters, DBSCAN ...
While the field of data mining has been studied extensively, most of the work has concentrated on di...
Fraud in healthcare services has the potential toreduce the quality of health services, harming pati...
Outliers in medical databases can be caused by measurement errors or may be the result of inherent d...
Health insurance helps people to obtain quality and affordable health services. The claim billing pr...
Health care insurance fraud is a pressing problem, causing substantial and increasing costs in medic...
Conventional techniques for detecting outliers address the problem of finding isolated observations ...
Data mining has the vital task of Outlier detection which aims to detect an outlier from given datas...
This study aims at exploiting Administrative Databases to identify potentially fraudulent providers....
The outlier detection in the field of data mining and Knowledge Discovering from Data (KDD) is captu...
In the current era of Big Data, getting data is no longer a difficult thing because they can access ...
The detection of outliers in the field of data mining (DM) and the process of knowledge discovery in...
Nowadays, health insurance companies face various types of fraud, like phantom billing, up-coding, a...
The aim of study is to discover outlier of customer data to found customer behaviour. The customer b...
Abstract— The anomaly or outlier detection is one of the applications of data mining. The major use ...
Threats or fraud for credit card owners and banks as service providers have been harmed by the actio...
While the field of data mining has been studied extensively, most of the work has concentrated on di...
Fraud in healthcare services has the potential toreduce the quality of health services, harming pati...
Outliers in medical databases can be caused by measurement errors or may be the result of inherent d...
Health insurance helps people to obtain quality and affordable health services. The claim billing pr...
Health care insurance fraud is a pressing problem, causing substantial and increasing costs in medic...
Conventional techniques for detecting outliers address the problem of finding isolated observations ...
Data mining has the vital task of Outlier detection which aims to detect an outlier from given datas...
This study aims at exploiting Administrative Databases to identify potentially fraudulent providers....
The outlier detection in the field of data mining and Knowledge Discovering from Data (KDD) is captu...
In the current era of Big Data, getting data is no longer a difficult thing because they can access ...
The detection of outliers in the field of data mining (DM) and the process of knowledge discovery in...
Nowadays, health insurance companies face various types of fraud, like phantom billing, up-coding, a...
The aim of study is to discover outlier of customer data to found customer behaviour. The customer b...
Abstract— The anomaly or outlier detection is one of the applications of data mining. The major use ...
Threats or fraud for credit card owners and banks as service providers have been harmed by the actio...
While the field of data mining has been studied extensively, most of the work has concentrated on di...
Fraud in healthcare services has the potential toreduce the quality of health services, harming pati...
Outliers in medical databases can be caused by measurement errors or may be the result of inherent d...