Computer Science ›› 2026, Vol. 53 ›› Issue (6A): 250600050-6.doi: 10.11896/jsjkx.250600050

• Big Data & Data Science • Previous Articles     Next Articles

Fraud Detection Model Based on Dual-space Heterogeneous Graph Neural Network

HAN Zhigeng, FU Chunshuo   

  1. School of Computer Science,Nanjing Audit University,Nanjing 211815,China
  • Online:2026-06-16 Published:2026-06-12
  • About author:HAN Zhigeng,born in 1976,Ph.D,associate professor,master's supervisor,is a member of CCF(No.20278M).His main research interests include fraud detection and recommendation algorithms.
    FU Chunshuo,born in 2001,postgra-duate.His main research interests include fraud detection and recommendation algorithms.
  • Supported by:
    National Natural Science Foundation of China(72072091),Natural Science Foundation of Colleges and Universities of Jiangsu Province(22KJA520005),Postgraduate Research & Practice Innovation Program of Jiangsu Province(SJCX24_1164,SJCX25_1147,KYCX25_2476),International Joint Audit Institute Special Project of Nanjing Audit University(2024JG092) and 2025 University-Level Industry-Education Integration Project of Nanjing Audit University.

Abstract: GNNs have emerged as a dominant approach for fraud detection due to their inherent ability to model graph-structured data and capture complex relational patterns in fraudulent activities.However,existing GNN-based fraud detection models face critical limitations:homogeneous GNNs struggle with heterogeneous relationships in fraud graphs,while heterogeneous GNNs typically process such relationships in only a single attribute or structural space,restricting their detection performance.To overcome these challenges,this paper proposes a novel dual-space heterogeneous GNN for fraud detection,which models user relationships as a multi-relational heterogeneous directed graph and employs a multi-layer graph convolutional architecture.Each convolutional layer integrates three key modules:(1)a heterophily learning module that separately learns node heterophily in attribute and structural spaces using labeled node information,then fuses these features via a weighted strategy;(2)a cross-space graph aggregation module that computes attention weights from the fused heterophily and updates node representations through multi-relational aggregation;(3)a prototype-guided classification module that constructs class prototypes from labeled nodes to guide the classification of unlabeled nodes.To address data scarcity and class imbalance,the model adopts a balanced sampling strategy for semi-supervised training.Experimental results on YelpChi and Amazon datasetss demonstrate that the proposed model has signi-ficant improvements,with Recall increasing by 0.962 6% and 0.644 4%,and AUC rising by 0.859 4% and 0.147 9%,respectively,outperforming nine baseline models.

Key words: Fraud detection, Graph neural networks, Heterophily learning, Prototype learning, Multi-relational graphs

CLC Number: 

  • TP391
[1] CHAN P P K,ZHANG C,CHEN H,et al.Evasion on general GAN-generated image detection by disentangled representation [J].Information Sciences,2024,683:121267.
[2] CHENG D,ZOU Y,XIANG S,et al.Graph neural networksfor financial fraud detection:A review[J]. Frontiers of Compu-ter Science,2025,19:199609.
[3] DOU Y,LIU Z,SUN L,et al.Enhancing graph neural net-work-based fraud detectors against camouflaged fraudsters[C]//Proc.29th ACM Int.Conf.Inf.Knowl.Manag.(CIKM).Galway,Ireland,2020:315-324.
[4] LIU Y,AO X,QIN Z,et al.Pick and choose:A GNN-based imbalanced learning approach for fraud detection[C]//Proc.Web Conf.2021(WWW).Lisbon,Spain,2021:3168-3177.
[5] WANG X,LIU Z,LIU J,et al.Fraud detection on multi-relation graphs via imbalanced and interactive learning[J].Information Sciences,2023,642:119153.
[6] ZHANG J,XU Z,LV D,et al.DiG-In-GNN:Discriminativefeature guided GNN-based fraud detector against inconsistencies in multi-relation fraud graph[C]//Proc.AAAI Conf.Artif.Intell.(AAAI).Vancouver,Canada,2024:9323-9331.
[7] HAN Z,ZHOU T,CHEN G,et al.A robust rating prediction model for recommendation systems based on fake user detection and multi-layer feature fusion[J].Big Data Mining and Analy-tics,2025,8(2):292-309.
[8] SHI F,CAO Y,SHANG Y,et al.H2-FDetector:A GNN-based fraud detector with homophilic and heterophilic connections[C]//Proc.ACM Web Conf.2022(WWW).Lyon,France,2022:1486-1494.
[9] GAO Y,WANG X,HE X,et al.Alleviating structural distribution shift in graph anomaly detection[C]//Proc.16th ACM Int.Conf.Web Search Data Min.(WSDM),Singapore,2023:357-365.
[10] WU B,YAO X,ZHANG B,et al.SplitGNN:Spectral graph neural network for fraud detection against heterophily[C]//Proc.32nd ACM Int.Conf.Inf.Knowl.Manag.(CIKM).Birmingham,United Kingdom,2023:2737-2746.
[11] XU F,WANG N,WU H,et al.Revisiting graph-based fraud detection in sight of heterophily and spectrum[C]//Proc.38th AAAI Conf.Artif.Intell.(AAAI).Vancouver,Canada,2024:9214-9222.
[12] FU C,LIU G,YUAN K,et al.Nowhere to H2IDE:Fraud detection from multi-relation graphs via disentangled homophily and heterophily identification[J]. IEEE Trans.Knowl.Data Eng.2025,37(3):1380-1393.
[13] WANG T,JIN D,WANG R,et al.Powerful graph convolutional networks with adaptive propagation mechanism for homophily and heterophily[C]//Proc.36th AAAI Conf.Artif.Intell.(AAAI).California,USA,2022:4210-4218.
[14] CHIEN E,PENG J,LI P,et al.Adaptive universal generalized PageRank graph neural network[C]//Proc.Int.Conf.Learn.Represent.(ICLR).Virtual Event,2021.
[15] KIPF T N,WELLING M.Semi-supervised classification withgraph convolutional networks[C]//Proc.Int.Conf.Learn.Represent.(ICLR).Toulon,France,2017.
[16] WU F,SOUZA A,ZHANG T,et al.Simplifying graph convolutional networks[C]//Proc.36th Int.Conf.Mach.Learn.(ICML),California,USA,2019:6861-6871.
[17] VELICˇKOVIC′ P,CUCURULL G,CASANOVA A,et al.Graph attention networks[C]//Proc.Int.Conf.Learn.Represent.(ICLR).Vancouver,Canada,2018.
[18] BO D,WANG X,SHI C,et al.Beyond low-frequency information in graph convolutional networks[C]//Proc.35th AAAI Conf.Artif.Intell.(AAAI).Virtual Event,2021:3950-3957.
[1] ZHANG Xinliang, LIU Lilong, CHEN Shangheng, CHEN Ziyang, QIAN Shengsheng. Dual-stream Heterogeneous Social Graph for Micro-video Popularity Prediction [J]. Computer Science, 2026, 53(6A): 250800073-8.
[2] ZHANG Zihao, WU Zezhong. Optimization of HAN-based GNN-Transformer Collaborative Contrastive Learning Framework [J]. Computer Science, 2026, 53(6A): 250900103-8.
[3] ZHANG Xin, CHEN Wen. CausalVulGNN:Framework for Software Vulnerability Explanation Based on Causal Inferenceand Graph Neural Networks [J]. Computer Science, 2026, 53(6): 427-436.
[4] WANG Jinghong, LI Pengchao, WANG Xizhao, ZHANG Zili. Dual-channel Graph Neural Network Based on KAN [J]. Computer Science, 2026, 53(3): 188-196.
[5] LIU Hongjian, ZOU Danping, LI Ping. Pedestrian Trajectory Prediction Method Based on Graph Attention Interaction [J]. Computer Science, 2026, 53(1): 97-103.
[6] LI Yaru, WANG Qianqian, CHE Chao, ZHU Deheng. Graph-based Compound-Protein Interaction Prediction with Drug Substructures and Protein 3D Information [J]. Computer Science, 2025, 52(9): 71-79.
[7] GUO Husheng, ZHANG Xufei, SUN Yujie, WANG Wenjian. Continuously Evolution Streaming Graph Neural Network [J]. Computer Science, 2025, 52(8): 118-126.
[8] JIANG Kun, ZHAO Zhengpeng, PU Yuanyuan, HUANG Jian, GU Jinjing, XU Dan. Cross-modal Hypergraph Optimisation Learning for Multimodal Sentiment Analysis [J]. Computer Science, 2025, 52(7): 210-217.
[9] LUO Xuyang, TAN Zhiyi. Knowledge-aware Graph Refinement Network for Recommendation [J]. Computer Science, 2025, 52(7): 103-109.
[10] HAO Jiahui, WAN Yuan, ZHANG Yuhang. Research on Node Learning of Graph Neural Networks Fusing Positional and StructuralInformation [J]. Computer Science, 2025, 52(7): 110-118.
[11] WANG Jinghong, WU Zhibing, WANG Xizhao, LI Haokang. Semantic-aware Heterogeneous Graph Attention Network Based on Multi-view RepresentationLearning [J]. Computer Science, 2025, 52(6): 167-178.
[12] WU Pengyuan, FANG Wei. Study on Graph Collaborative Filtering Model Based on FeatureNet Contrastive Learning [J]. Computer Science, 2025, 52(5): 139-148.
[13] HE Liren, PENG Bo, CHI Mingmin. Unsupervised Multi-class Anomaly Detection Based on Prototype Reverse Distillation [J]. Computer Science, 2025, 52(2): 202-211.
[14] WU Ying, YE Hailiang, CAO Feilong. Superpixel-level Graph Feature Learning Method for Hyperspectral Image Denoising [J]. Computer Science, 2025, 52(12): 189-199.
[15] LYU Shuqi, ZHANG Yunfeng. Fraud User Detection Based on Heterogeneous Information Network with Knowledge Graph Eembedding [J]. Computer Science, 2025, 52(11A): 250400085-7.
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!