Journal of Jilin University (Information Science Edition) ›› 2024, Vol. 42 ›› Issue (5): 930-936.

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Research on AI Modeling Approaches of Financial Transactional Fraud Detection

QIAN Lianghong1, WANG Fude2, SONG Hailong2   

  1. 1. Data Science Department, Yepdata Software Technology Company Limited, Shanghai 200233, China; 2. Technology Department, Technical Department, Jilin Haicheng Technology Company Limited, Changchun 130119, China; 3. Smart Agriculture Research Institute, Jilin Agricultural University, Changchun 130118, China
  • Received:2023-12-28 Online:2024-10-21 Published:2024-10-23

Abstract: To detect transactional fraud in financial services industry and maintain financial security, an end-to- end modeling framework, methodology, and model architecture are proposed for financial transactional data with imbalanced and discrete classes. The framework covers data preprocessing, model training, and model prediction. The performance and efficiency of different models with different numbers of features are compared and validated on a real-world dataset. The results demonstrate that the proposed approach can effectively improve the accuracy and efficiency of financial transactional fraud detection, providing a reference for financial institutions to select models with different types and numbers of features according to their own optimization goals and resource constraints. Tree-based models excel with over 200 features in resource-rich settings, while neural networks are optimal for medium-sized feature sets (100 ~200). Decision trees or logistic regression are suitable for small feature sets in resource-constrained, long-tail scenarios. 

Key words: fraud detection, artificial intelligence, model selection, machine learning, deep learning 

CLC Number: 

  • TP181