Anomaly and Fraud Detection in Credit Card Transactions Using the ARIMA Model
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Box Plot
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This paper addresses the problem of the unsupervised approach of credit card fraud detection in unbalanced datasets using the ARIMA model. The ARIMA model is fitted to the regular spending behaviour of the customer and is used to detect fraud if some deviations or discrepancies appear. Our model is applied to credit card datasets and is compared to four anomaly detection approaches, namely, the K-means, box plot, local outlier factor and isolation forest approaches. The results show that the ARIMA model presents better detecting power than that of the benchmark models.
2020 ◽
Vol 6
(12)
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pp. 24-27
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2019 ◽
Vol 7
(4)
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pp. 1060-1064
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2019 ◽
Vol 7
(4)
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pp. 1170-1175
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2021 ◽
Vol 10
(5)
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pp. 76-78
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2020 ◽
Vol 9
(4)
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pp. 261-265
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2018 ◽
Vol 6
(9)
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pp. 840-843
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