The term fraud refers to an intentional deception or misrepresentation made by a person or an entity, with the knowledge that the deception could result in some kinds of unauthorized benefits to that person or entity. Fraud detection, being part of the overall fraud control, should be automated as much as possible to reduce the manual steps of a screening/checking process. In the health care systems, fraud has led to significant additional expenses. Development of a cost-effective health care system requires effective ways to detect fraud. It is impossible to be certain about the legitimacy of and intention behind an application or transaction. Given the reality, the best cost effective option is to infer potential fraud from the available data using mathematical models and suitable algorithms. Among these, in recent years coclustering has emerged as a powerful data mining tool for analysis of dyadic data connecting two entities. In this paper application of Bayesian ideas in healthcare fraud detection will be presented. The emphasis will be on the use of Bayesian co-clustering to identify potentially fraudulent providers and beneficiaries who have unusual group memberships. Detection of such unusual memberships will be helpful to decision makers in audits. Copyright © 2013, AIDIC Servizi S.r.l.

Application of Bayesian methods in detection of healthcare fraud

F Ruggeri;
2013

Abstract

The term fraud refers to an intentional deception or misrepresentation made by a person or an entity, with the knowledge that the deception could result in some kinds of unauthorized benefits to that person or entity. Fraud detection, being part of the overall fraud control, should be automated as much as possible to reduce the manual steps of a screening/checking process. In the health care systems, fraud has led to significant additional expenses. Development of a cost-effective health care system requires effective ways to detect fraud. It is impossible to be certain about the legitimacy of and intention behind an application or transaction. Given the reality, the best cost effective option is to infer potential fraud from the available data using mathematical models and suitable algorithms. Among these, in recent years coclustering has emerged as a powerful data mining tool for analysis of dyadic data connecting two entities. In this paper application of Bayesian ideas in healthcare fraud detection will be presented. The emphasis will be on the use of Bayesian co-clustering to identify potentially fraudulent providers and beneficiaries who have unusual group memberships. Detection of such unusual memberships will be helpful to decision makers in audits. Copyright © 2013, AIDIC Servizi S.r.l.
2013
Istituto di Matematica Applicata e Tecnologie Informatiche - IMATI -
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/222962
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