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MS_HGNN: a hybrid online fraud detection model to alleviate graph-based data imbalance.

Authors :
Long, Jing
Fang, Fei
Luo, Cuiting
Wei, Yehua
Weng, Tien-Hsiung
Source :
Connection Science; Dec2023, Vol. 35 Issue 1, p1-17, 17p
Publication Year :
2023

Abstract

Online transaction fraud has become increasingly rampant due to the convenience of mobile payment. Fraud detection is critical to ensure the security of online transactions. With the development of graph neural network, researchers have applied it to the field of fraud detection. The existing fraud detection methods will solve the class imbalance by sampling, but they do not fully consider the various imbalances in the heterogeneous graph, and the data imbalance will directly affect the performance of the model. This work proposes a hybrid graph neural network model for online fraud detection to address this issue. The three types of imbalance in online transactions are feature imbalance, category imbalance, and relation imbalance, and they are all addressed in the proposed model. The entities with the feature most closely related to the fraudsters will be determined for the feature imbalance, and samples will be taken for further identification in the subsequent training phase. The hybrid model then uses under-sampling in combination with the long-distance sampling to find nodes with high similarity of features for the category imbalance. Finally, we propose a reward/punishment mechanism based on reinforcement learning for relation imbalance, which uses the threshold created by training as the sampling weight between relations. This paper conducts experiments on the public datasets Amazon and Yelp. The experimental results show that the model proposed is 5.61% higher than the best model in the comparison model on Amazon dataset, and 1.58% higher on Yelp dataset. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09540091
Volume :
35
Issue :
1
Database :
Complementary Index
Journal :
Connection Science
Publication Type :
Academic Journal
Accession number :
174546650
Full Text :
https://doi.org/10.1080/09540091.2023.2191893