TY - GEN
T1 - Targeted Detection of Anomalous Merchants on Integrated Payment Platforms via Multifaceted Transaction Representation Learning
AU - Lu, Guanyu
AU - Lin, Xiang
AU - Pavlovski, Martin
AU - Zhang, Xinyu
AU - Zhou, Fang
N1 - Publisher Copyright:
© 2024 IEEE.
PY - 2024
Y1 - 2024
N2 - Integrated payment platforms have significantly improved the convenience of daily life, yet they also present a fertile ground for fraudulent behavior. This paper focuses on the detection of anomalous merchants at the transaction level on such platforms, as locating specific anomalous patterns at such a granular level aids in taking corresponding security measures. However, in an integrated payment scenario, a limited number of imprecise labels are accessed at the merchant level rather than the transaction level, thus rendering transaction-level anomaly detection quite difficult. Meanwhile, the collected data comprises not only normal merchants and target anomalies (of interest) but also non-target anomalies (of lesser interest). To address these challenges, we adopt a two-step approach. First, we cluster merchants exhibiting similar behaviors and filter out potential non-target anomalies to better understand the transactional patterns among normal merchants. Then, we learn transaction representations encapsulated within hyperspheres, considering three key aspects: transaction context, historical information, and merchant information; and leverage such representations to determine anomaly scores for individual transactions. Real-world transactions from an integrated payment platform were used in the experiments. The results demonstrate that our model outperforms several state-of-the-art baselines, with an average AUPRC improvement of 10.5%-11.6%, 16.5%-16.7%, and 3.7%-5.4% in the three discovered merchant clusters.
AB - Integrated payment platforms have significantly improved the convenience of daily life, yet they also present a fertile ground for fraudulent behavior. This paper focuses on the detection of anomalous merchants at the transaction level on such platforms, as locating specific anomalous patterns at such a granular level aids in taking corresponding security measures. However, in an integrated payment scenario, a limited number of imprecise labels are accessed at the merchant level rather than the transaction level, thus rendering transaction-level anomaly detection quite difficult. Meanwhile, the collected data comprises not only normal merchants and target anomalies (of interest) but also non-target anomalies (of lesser interest). To address these challenges, we adopt a two-step approach. First, we cluster merchants exhibiting similar behaviors and filter out potential non-target anomalies to better understand the transactional patterns among normal merchants. Then, we learn transaction representations encapsulated within hyperspheres, considering three key aspects: transaction context, historical information, and merchant information; and leverage such representations to determine anomaly scores for individual transactions. Real-world transactions from an integrated payment platform were used in the experiments. The results demonstrate that our model outperforms several state-of-the-art baselines, with an average AUPRC improvement of 10.5%-11.6%, 16.5%-16.7%, and 3.7%-5.4% in the three discovered merchant clusters.
KW - anomaly detection
KW - integrated payment platform
KW - transaction representation learning
UR - https://www.scopus.com/pages/publications/85218051323
U2 - 10.1109/BigData62323.2024.10825015
DO - 10.1109/BigData62323.2024.10825015
M3 - 会议稿件
AN - SCOPUS:85218051323
T3 - Proceedings - 2024 IEEE International Conference on Big Data, BigData 2024
SP - 2170
EP - 2178
BT - Proceedings - 2024 IEEE International Conference on Big Data, BigData 2024
A2 - Ding, Wei
A2 - Lu, Chang-Tien
A2 - Wang, Fusheng
A2 - Di, Liping
A2 - Wu, Kesheng
A2 - Huan, Jun
A2 - Nambiar, Raghu
A2 - Li, Jundong
A2 - Ilievski, Filip
A2 - Baeza-Yates, Ricardo
A2 - Hu, Xiaohua
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2024 IEEE International Conference on Big Data, BigData 2024
Y2 - 15 December 2024 through 18 December 2024
ER -