FraudMiner: A Novel Credit Card Fraud Detection Model Based on Frequent Itemset Mining

This paper proposes an intelligent credit card fraud detection model for detecting fraud from highly imbalanced and anonymous credit card transaction datasets. The class imbalance problem is handled by finding legal as well as fraud transaction patterns for each customer by using frequent itemset mi...

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Main Authors: K. R. Seeja, Masoumeh Zareapoor
Format: Article
Language:English
Published: Hindawi Limited 2014-01-01
Series:The Scientific World Journal
Online Access:http://dx.doi.org/10.1155/2014/252797
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spelling doaj-0db8d1a58c424346816ab7a36a0423242020-11-25T02:03:47ZengHindawi LimitedThe Scientific World Journal2356-61401537-744X2014-01-01201410.1155/2014/252797252797FraudMiner: A Novel Credit Card Fraud Detection Model Based on Frequent Itemset MiningK. R. Seeja0Masoumeh Zareapoor1Department of Computer Science, Jamia Hamdard University, New Delhi 110062, IndiaDepartment of Computer Science, Jamia Hamdard University, New Delhi 110062, IndiaThis paper proposes an intelligent credit card fraud detection model for detecting fraud from highly imbalanced and anonymous credit card transaction datasets. The class imbalance problem is handled by finding legal as well as fraud transaction patterns for each customer by using frequent itemset mining. A matching algorithm is also proposed to find to which pattern (legal or fraud) the incoming transaction of a particular customer is closer and a decision is made accordingly. In order to handle the anonymous nature of the data, no preference is given to any of the attributes and each attribute is considered equally for finding the patterns. The performance evaluation of the proposed model is done on UCSD Data Mining Contest 2009 Dataset (anonymous and imbalanced) and it is found that the proposed model has very high fraud detection rate, balanced classification rate, Matthews correlation coefficient, and very less false alarm rate than other state-of-the-art classifiers.http://dx.doi.org/10.1155/2014/252797
collection DOAJ
language English
format Article
sources DOAJ
author K. R. Seeja
Masoumeh Zareapoor
spellingShingle K. R. Seeja
Masoumeh Zareapoor
FraudMiner: A Novel Credit Card Fraud Detection Model Based on Frequent Itemset Mining
The Scientific World Journal
author_facet K. R. Seeja
Masoumeh Zareapoor
author_sort K. R. Seeja
title FraudMiner: A Novel Credit Card Fraud Detection Model Based on Frequent Itemset Mining
title_short FraudMiner: A Novel Credit Card Fraud Detection Model Based on Frequent Itemset Mining
title_full FraudMiner: A Novel Credit Card Fraud Detection Model Based on Frequent Itemset Mining
title_fullStr FraudMiner: A Novel Credit Card Fraud Detection Model Based on Frequent Itemset Mining
title_full_unstemmed FraudMiner: A Novel Credit Card Fraud Detection Model Based on Frequent Itemset Mining
title_sort fraudminer: a novel credit card fraud detection model based on frequent itemset mining
publisher Hindawi Limited
series The Scientific World Journal
issn 2356-6140
1537-744X
publishDate 2014-01-01
description This paper proposes an intelligent credit card fraud detection model for detecting fraud from highly imbalanced and anonymous credit card transaction datasets. The class imbalance problem is handled by finding legal as well as fraud transaction patterns for each customer by using frequent itemset mining. A matching algorithm is also proposed to find to which pattern (legal or fraud) the incoming transaction of a particular customer is closer and a decision is made accordingly. In order to handle the anonymous nature of the data, no preference is given to any of the attributes and each attribute is considered equally for finding the patterns. The performance evaluation of the proposed model is done on UCSD Data Mining Contest 2009 Dataset (anonymous and imbalanced) and it is found that the proposed model has very high fraud detection rate, balanced classification rate, Matthews correlation coefficient, and very less false alarm rate than other state-of-the-art classifiers.
url http://dx.doi.org/10.1155/2014/252797
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AT masoumehzareapoor fraudmineranovelcreditcardfrauddetectionmodelbasedonfrequentitemsetmining
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