Fraud detection and frequent pattern matching in insurance claims using data mining techniques

Fraudulent insurance claims increase the burden on society. Frauds in health care systems have not only led to additional expenses but also degrade the quality and care which should be provided to patients. Insurance fraud detection is quite subjective in nature and is fettered with societal need. This empirical study aims to identify and gauge the frauds in health insurance data. The contribution of this insurance claim fraud detection experimental study untangle the fraud identification frequent patterns underlying in the insurance claim data using rule based pattern mining. This experiment is an effort to assess the fraudulent patterns in the data on the basis of two criteria-period based claim anomalies and disease based anomalies. Rule based mining results according to both criteria are analysed. Statistical Decision rules and k-means clustering are applied on Period based claim anomalies outliers detection and association rule based mining with Gaussian distribution is applied on disease based anomalies outlier detection. These outliers depict fraud insurance claims in the data. The proposed approach has been evaluated on real-world dataset of a health insurance organization and results show that our proposed approach is efficient in detecting fraud insurance claim using rule based mining.

[1]  R. J. Kuo,et al.  Mining association rules through integration of clustering analysis and ant colony system for health insurance database in Taiwan , 2007, Expert Syst. Appl..

[2]  Ramakrishnan Srikant,et al.  Fast algorithms for mining association rules , 1998, VLDB 1998.

[3]  Qi Liu,et al.  Healthcare fraud detection : A survey and a clustering model incorporating Geolocation information , 2013 .

[4]  Fabrizio Angiulli,et al.  Outlier Detection Techniques for Data Mining , 2009, Encyclopedia of Data Warehousing and Mining.

[5]  Jos van Hillegersberg,et al.  Predicting Healthcare Fraud in Medicaid: A Multidimensional Data Model and Analysis Techniques for Fraud Detection , 2013 .

[6]  Jos van Hillegersberg,et al.  Outlier-based Health Insurance Fraud Detection for U.S. Medicaid Data , 2014, ICEIS.

[7]  B. Minaei-Bidgoli,et al.  Using Data Mining to Detect Health Care Fraud and Abuse: A Review of Literature , 2014, Global journal of health science.

[8]  Jos van Hillegersberg,et al.  Electronic Fraud Detection in the U.S. Medicaid Healthcare Program: Lessons Learned from other Industries , 2011, AMCIS.

[9]  Keng Siau,et al.  A review of data mining techniques , 2001, Ind. Manag. Data Syst..

[10]  Anuja Arora,et al.  A bug Mining tool to identify and analyze security bugs using Naive Bayes and TF-IDF , 2014, 2014 International Conference on Reliability Optimization and Information Technology (ICROIT).

[11]  Jim Gee,et al.  The Financial Cost of Healthcare Fraud , 2012 .

[12]  Jionghua Jin,et al.  A survey on statistical methods for health care fraud detection , 2008, Health care management science.

[13]  Kemal Kilic,et al.  An interactive machine-learning-based electronic fraud and abuse detection system in healthcare insurance , 2015, Appl. Soft Comput..

[14]  Arun K Pujari,et al.  Clustering Techniques in Data Mining—A Survey , 2001 .

[15]  San-Yih Hwang,et al.  A process-mining framework for the detection of healthcare fraud and abuse , 2006, Expert Syst. Appl..

[16]  Anuja Arora,et al.  Android app behaviour classification using topic modeling techniques and outlier detection using app permissions , 2016, 2016 Fourth International Conference on Parallel, Distributed and Grid Computing (PDGC).

[17]  Pedro A. Ortega,et al.  A Medical Claim Fraud/Abuse Detection System based on Data Mining: A Case Study in Chile , 2006, DMIN.