Burstiness-aware Bipartite Graph Neural Networks for Fraudulent User Detection on Rating Platforms

Yen Wen Lu, Yu Che Tsai, Cheng Te Li

研究成果: Conference contribution

摘要

As the digital commerce landscape continues to expand with rating platforms, the consumer base has similarly grown, marking a pivotal reliance on user ratings and reviews. However, the rise of fraudulent users leveraging deceitful conduct, such as manipulation of product rankings, challenges the credibility of these platforms and compels the necessity for an effective detection model. Amid the challenges of evolving fraudulent patterns and label scarcity, this paper presents a novel model, Burstiness-aware Bipartite Graph Neural Networks (BurstBGN), which combats fraud by exploiting user-product bipartite graphs and timestamped rating activities. BurstBGN encapsulates two key ideas: the modeling of user-product interaction via historical rating data through an Edge-time GNN module and the exhaustive mapping of bursty fraudulent user activities. The performance of BurstBGN is demonstrated through rigorous benchmarking against established methods across three datasets. Our results show that BurstBGN consistently outperforms these methods under both transductive and inductive settings, confirming its effectiveness in detecting fraudulent users from limited annotated data, and thereby providing a safeguard for maintaining user trust in e-commerce platforms.

原文English
主出版物標題WWW 2024 Companion - Companion Proceedings of the ACM Web Conference
發行者Association for Computing Machinery, Inc
頁面834-837
頁數4
ISBN(電子)9798400701726
DOIs
出版狀態Published - 2024 5月 13
事件33rd ACM Web Conference, WWW 2024 - Singapore, Singapore
持續時間: 2024 5月 132024 5月 17

出版系列

名字WWW 2024 Companion - Companion Proceedings of the ACM Web Conference

Conference

Conference33rd ACM Web Conference, WWW 2024
國家/地區Singapore
城市Singapore
期間24-05-1324-05-17

All Science Journal Classification (ASJC) codes

  • 電腦網路與通信
  • 軟體

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