全部 标题 作者
关键词 摘要

OALib Journal期刊
ISSN: 2333-9721
费用:99美元

查看量下载量

相关文章

更多...
Engineering  2025 

Mixed Integer Program for e-Wallet Security Based on Suspicious Transaction Detection

DOI: 10.4236/eng.2025.171010, PP. 155-167

Keywords: e-Wallet, PMNE, Digital Transaction, Suspicion Score, Suspicious Transaction

Full-Text   Cite this paper   Add to My Lib

Abstract:

With the rise of digital transactions, e-Wallets have become prime targets for fraudulent activity. Early detection of suspicious transactions is therefore crucial to protect users and maintain trust in these systems. This article proposes a mathematical model based on a Mixed Integer Program (MIP) to identify and block suspicious transactions. This mathematical approach is designed to analyze e-Wallet transactions in real time by combining integer and continuous decision variables, offering greater flexibility in modeling fraud detection constraints. It considers parameters such as transaction cost, geographical location, type of device used for the transaction, IP address and other potential fraud indicators. Assigning suspicion scores to each transaction enables the model to identify risks that become habitual behavior and mark them as suspicious. Tests carried out on 10,000 digital transactions show that using PMNE significantly improves the detection of fraudulent transactions by identifying the most critical anomalies in terms of accuracy, adaptability and operational efficiency. The model also offers greater accuracy, reducing the number of false positives and false negatives, enabling faster intervention to block truly suspicious transactions.

References

[1]  Jha, S., Pathak, R. and Verma, K. (2019) Fraud Detection in Digital Payment Systems: A Review. Computers & Security, 89, Article ID: 101675.
[2]  Gupta, K., Singh, V. and Mishra, P. (2020) Secure Payment Systems: Challenges and Opportunities in e-Wallet Technology. Journal of Financial Technology, 45, 15-23.
[3]  Nguyen, H.T., Dang, M.L. and Tran, P.Q. (2020) Unsupervised Learning for Anomaly Detection in Payment Systems. Expert Systems with Applications, 161, Article ID: 113731.
[4]  Estevez, P.A., Tesmer, M. and Perez, C.A. (2018) Feature Selection for Anomaly Detection in e-Wallet Transactions. Pattern Recognition, 79, 237-249.
[5]  Hansen, P. and Jaumard, B. (1990) Algorithms for the Constrained Assignment Problem. Journal of Optimization Theory and Applications, 64, 445-467.
[6]  Zhao, Y. and Hryniewicz, O. (2019) Robust Optimization for Secure Payment Systems. Cybersecurity Journal, 10, 145-163.
[7]  Wang, X., Zhao, Y. and Chen, L. (2021) Mixed-Integer Programming Models for Fraud Detection in Digital Wallets. Applied Mathematics and Computation, 398, Article ID: 125655.
[8]  Kim, H.J. and Lee, J.S. (2021) Transaction Behavior Analysis for e-Wallet Security. Cybersecurity Journal, 10, 145-163.
[9]  Li, Z. and Liu, T. (2022) Artificial Intelligence-Enhanced Optimization Models for Fraud Detection. IEEE Transactions on Neural Networks and Learning Systems, 33, 4567-4580.
[10]  Ho, T.K. and Basu, M. (2019) Ensemble Learning for Fraud Detection. Machine Learning Applications, 3, 85-102.
[11]  Meidan, Y. and Klein, R. (2020) Hybrid Models for Anomaly Detection in e-Wallet Transactions. Artificial Intelligence in Finance, 12, 287-305.
[12]  Sadighian, P. and Karimi, M. (2021) Security Policies and Anomaly Detection for Digital Wallets. International Journal of Information Security, 20, 49-68.

Full-Text

Contact Us

service@oalib.com

QQ:3279437679

WhatsApp +8615387084133