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Main Authors: Zhang, Xiaocheng, Ye, Zhuangzhuang, Zhao, GuoPing, Wang, Jianing, Su, Xiaohong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.12430
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author Zhang, Xiaocheng
Ye, Zhuangzhuang
Zhao, GuoPing
Wang, Jianing
Su, Xiaohong
author_facet Zhang, Xiaocheng
Ye, Zhuangzhuang
Zhao, GuoPing
Wang, Jianing
Su, Xiaohong
contents In fraud detection, fraudsters often interact with many benign users, camouflaging their features or relations to hide themselves. Most existing work concentrates solely on either feature camouflage or relation camouflage, or decoupling feature learning and relation learning to avoid the two camouflage from affecting each other. However, this inadvertently neglects the valuable information derived from features or relations, which could mutually enhance their adversarial camouflage strategies. In response to this gap, we propose SCFCRC, a Transformer-based fraud detector that Simultaneously Counteract Feature Camouflage and Relation Camouflage. SCFCRC consists of two components: Feature Camouflage Filter and Relation Camouflage Refiner. The feature camouflage filter utilizes pseudo labels generated through label propagation to train the filter and uses contrastive learning that combines instance-wise and prototype-wise to improve the quality of features. The relation camouflage refiner uses Mixture-of-Experts(MoE) network to disassemble the multi-relations graph into multiple substructures and divide and conquer them to mitigate the degradation of detection performance caused by relation camouflage. Furthermore, we introduce a regularization method for MoE to enhance the robustness of the model. Extensive experiments on two fraud detection benchmark datasets demonstrate that our method outperforms state-of-the-art baselines.
format Preprint
id arxiv_https___arxiv_org_abs_2501_12430
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SCFCRC: Simultaneously Counteract Feature Camouflage and Relation Camouflage for Fraud Detection
Zhang, Xiaocheng
Ye, Zhuangzhuang
Zhao, GuoPing
Wang, Jianing
Su, Xiaohong
Machine Learning
Artificial Intelligence
In fraud detection, fraudsters often interact with many benign users, camouflaging their features or relations to hide themselves. Most existing work concentrates solely on either feature camouflage or relation camouflage, or decoupling feature learning and relation learning to avoid the two camouflage from affecting each other. However, this inadvertently neglects the valuable information derived from features or relations, which could mutually enhance their adversarial camouflage strategies. In response to this gap, we propose SCFCRC, a Transformer-based fraud detector that Simultaneously Counteract Feature Camouflage and Relation Camouflage. SCFCRC consists of two components: Feature Camouflage Filter and Relation Camouflage Refiner. The feature camouflage filter utilizes pseudo labels generated through label propagation to train the filter and uses contrastive learning that combines instance-wise and prototype-wise to improve the quality of features. The relation camouflage refiner uses Mixture-of-Experts(MoE) network to disassemble the multi-relations graph into multiple substructures and divide and conquer them to mitigate the degradation of detection performance caused by relation camouflage. Furthermore, we introduce a regularization method for MoE to enhance the robustness of the model. Extensive experiments on two fraud detection benchmark datasets demonstrate that our method outperforms state-of-the-art baselines.
title SCFCRC: Simultaneously Counteract Feature Camouflage and Relation Camouflage for Fraud Detection
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2501.12430