Credit card fraud detection using decision tree for tracing email and IP

被引:0
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作者
Dhanapal, R. [1 ]
Gayathiri, P. [2 ]
机构
[1] Department of Computer Applications, Eswari Engineering College, Chennai-600089, India
[2] Research Scholar in Manonmaniam Sundaranar University, Department of Computer Science, Kanchi Sri Krishna College, Kanchipuram, India
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关键词
Electronic mail - Data mining - Crime;
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摘要
Credit card fraud is a wide-ranging term for theft and fraud committed using a credit card or any similar payment mechanism as a fraudulent source of funds in a transaction. The purpose may be to obtain goods without paying, or to obtain unauthorized funds from an account. Transactions completed with credit cards seem to become more and more popular with the introduction of online shopping and banking. Correspondingly, the number of credit card frauds has also increased. Currently; data mining is a popular way to combat frauds because of its effectiveness. Data mining is a welldefined procedure that takes data as input and produces output in the forms of models or patterns. In other words, the task of data mining is to analyze a massive amount of data and to extract some usable information that we can interpret for future uses. Frauds has also increased .Currently, data mining is a popular way to combat frauds because of its effectiveness. Data mining is a well-defined procedure that takes data as input and produces output in the forms of models or patterns. In other words, the task of data mining is to analyze a massive amount of data and to extract some usable information that we can interpret for future uses. © 2012 International Journal of Computer Science Issues.
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页码:406 / 412
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