Insurance fraud is one of the most expensive economic financial crimes. Most risk management solutions use rules to detect potential abuse, but as the patterns of abuse change, those solutions become ineffective. In this paper we apply machine learning (Decision Trees, Bagging, Random Forests and Boosting) for fraud detection in health insurance. Performance of the model is evaluated using accuracy, error rate, sensitivity and specificity. The best results were achieved using Bagging technique. In further research it would be useful to analyze applicability of deep learning models and anomaly detection methodsBaltijos pažangių technologijų institutas, VilniusMatematikos ir statistikos katedraTaikomosios informatikos katedraVytauto Didžiojo ...
Abstract: Health insurance fraud remains a global menace despite the controls implemented to address...
Detecting fraudulent and abusive cases in healthcare is one of the most challenging problems for dat...
Abstract: A data-driven Fraud detection model for insurance business can be seen as a two-phase meth...
Abstract: This paper presents a review of the literature on the application of data mining technique...
This paper evaluated fraud prediction in property insurance claims using various machine learning mo...
AbstractFraud can be seen in all insurance types including health insurance. Fraud in health insuran...
Machine learning methods are explored in an attempt to achieve better predictive performance than th...
Abstract : The menace of fraud today cannot be underestimated. The healthcare system put in place to...
textThis dissertation develops statistical and data mining based methods for insurance fraud detecti...
Health insurance has come in rescue for people, in reducing their medical expenditure, which otherwi...
Abstract Identifying insurance fraud is a difficult task due to the complex nature of the fraud itse...
The purpose of this study is to predict in advance, whether the policy claims are made for abuse in ...
The paper presents application of data mining techniques to fraud analysis. We present some classifi...
Fraud is a significant issue for insurers. Previous literature has mainly used supervised learning t...
Abstract— The anomaly or outlier detection is one of the applications of data mining. The major use ...
Abstract: Health insurance fraud remains a global menace despite the controls implemented to address...
Detecting fraudulent and abusive cases in healthcare is one of the most challenging problems for dat...
Abstract: A data-driven Fraud detection model for insurance business can be seen as a two-phase meth...
Abstract: This paper presents a review of the literature on the application of data mining technique...
This paper evaluated fraud prediction in property insurance claims using various machine learning mo...
AbstractFraud can be seen in all insurance types including health insurance. Fraud in health insuran...
Machine learning methods are explored in an attempt to achieve better predictive performance than th...
Abstract : The menace of fraud today cannot be underestimated. The healthcare system put in place to...
textThis dissertation develops statistical and data mining based methods for insurance fraud detecti...
Health insurance has come in rescue for people, in reducing their medical expenditure, which otherwi...
Abstract Identifying insurance fraud is a difficult task due to the complex nature of the fraud itse...
The purpose of this study is to predict in advance, whether the policy claims are made for abuse in ...
The paper presents application of data mining techniques to fraud analysis. We present some classifi...
Fraud is a significant issue for insurers. Previous literature has mainly used supervised learning t...
Abstract— The anomaly or outlier detection is one of the applications of data mining. The major use ...
Abstract: Health insurance fraud remains a global menace despite the controls implemented to address...
Detecting fraudulent and abusive cases in healthcare is one of the most challenging problems for dat...
Abstract: A data-driven Fraud detection model for insurance business can be seen as a two-phase meth...