Publication | Closed Access
Learning temporal representation of transaction amount for fraudulent transaction recognition using CNN, Stacked LSTM, and CNN-LSTM
87
Citations
37
References
2017
Year
Unknown Venue
Fraud DetectionIndonesia BankConvolutional Neural NetworkEngineeringMachine LearningData ScienceClass ImbalancePattern RecognitionStacked LstmMachine Learning ModelMoney LaunderingTemporal RepresentationInformation ForensicsFraudulent Transaction RecognitionDeep LearningRecurrent Neural NetworkFinancial CrimeRoc Curve
This paper aims to explore deep learning model to learn short-term and long-term patterns from imbalanced input dataset. Data for this study are imbalanced card transactions from an Indonesia bank in period 2016–2017 with binary labels (nonfraud or fraud). From 50 features of the dataset, 30 principal components of data contribute to 87 % of the cumulative Eigenvalues. This study explores the effect of nonfraud to fraud sample ratio from 1 to 4 and three models: Convolutional Neural Network (CNN), Stacked Long Short-term Memory (SLSTM), and Hybrid of CNN-LSTM. Using Area Under the ROC Curve (AUC) as model performance, CNN achieved the highest AUC for R=1,2,3,4 followed by SLSTM and CNN-LSTM.
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