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Awesome Graph-based Financial Fraud Detection Papers and Codes

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Awesome Graph-based Fraud Detection Papers and Codes

Awesome Graph-based Financial Fraud Detection Papers and Codes. This is a curated list of research papers focusing on financial fraud detection using Graph Neural Networks (GNNs) from various conferences and fields:

This list aims to provide a comprehensive overview of research papers that utilize Graph Neural Networks for financial fraud detection across various academic conferences and disciplines.

2024

  • Pre-trained Online Contrastive Learning for Insurance Fraud Detection (AAAI) [Paper]

    Rui Zhang, Dawei Cheng, Jie Yang, Yi Ouyang, Xian Wu, Yefeng Zheng, Changjun Jiang

2023

  • Semi-supervised Credit Card Fraud Detection via Attribute-driven Graph Representation (AAAI) [Paper] [Code]

    Sheng Xiang, Mingzhi Zhu, Dawei Cheng, Enxia Li, Ruihui Zhao, Yi Ouyang, Ling Chen, Yefeng Zheng

  • FIW-GNN: A Heterogeneous Graph-Based Learning Model for Credit Card Fraud Detection (DSAA) [Paper]

    Yan, Kuan, Gao, Junbin, Matsypura, Dmytro

  • Unsupervised Fraud Transaction Detection on Dynamic Attributed Networks (DSAA) [Paper]

    Yangyang Hou, Daixin Wang, Binbin Hu, Ruoyu Zhuang, Zhiqiang Zhang, Jun Zhou, Feng Zhao, Yulin Kang, Zhanwen Qiao

  • Dynamic graph neural network-based fraud detectors against collaborative fraudsters (KBS) [Paper]

    Lingfei Ren, Ruimin Hu, Dengshi Li, Yang Liu, Junhang Wu, Yilong Zang, Wenyi Hu

  • Anti-Money Laundering by Group-Aware Deep Graph Learning (TKDE) [Paper]

    Dawei Cheng, Yujia Ye, Sheng Xiang, Zhenwei Ma, Ying Zhang, Changjun Jiang

  • Realistic Synthetic Financial Transactions for Anti-Money Laundering Models (NeurIPS) [Paper]

    Erik Altman, Jovan Blanuša, Luc von Niederhäusern, Beni Egressy, Andreea Anghel, Kubilay Atasu

  • MIDLG: Mutual Information based Dual Level GNN for Transaction Fraud Complaint Verification (KDD) [Paper]

    Wen Zheng, Bingbing Xu, Emiao Lu, Yang Li, Qi Cao, Xuan Zong, and Huawei Shen

  • Internet Financial Fraud Detection Based on Graph Learning (IEEE T-CSS) [Paper]

    Ranran Li , Zhaowei Liu , Yuanqing Ma, Dong Yang, Shuaijie Sun

2022

  • Explainable Graph-based Fraud Detection via Neural Meta-graph Search (CIKM) [Paper]

    Zidi Qin, Yang Liu, Qing He, Xiang Ao

  • The Importance of Future Information in Credit Card Fraud Detection (AISTATS) [Paper]

    Van Bach Nguyen, Kanishka Ghosh Dastidar, Michael Granitzer, Wissam Siblini

  • Inductive Graph Representation Learning for fraud detection (ESWA) [Paper]

    Rafaël Van Belle, Charles Van Damme, Hendrik Tytgat, Jochen De Weerdt

  • Inspection-L: self-supervised GNN node embeddings for money laundering detection in bitcoin (ArXiv) [Paper]

    Wai Weng Lo, Gayan K. Kulatilleke, Mohanad Sarhan, Siamak Layeghy, Marius Portmann

  • BRIGHT - Graph Neural Networks in Real-time Fraud Detection (CIKM) [Paper]

    Mingxuan Lu, Zhichao Han, Susie Xi Rao, Zitao Zhang, Yang Zhao, Yinan Shan, Ramesh Raghunathan, Ce Zhang, Jiawei Jiang

  • Ethereum Fraud Detection with Heterogeneous Graph Neural Networks (KDD) [Paper]

    Hiroki Kanezashi, Toyotaro Suzumura, Xin Liu, Takahiro Hirofuchi

  • xFraud: Explainable Fraud Transaction Detection (ArXiv) [Paper]

    Susie Xi Rao, Shuai Zhang, Zhichao Han, Zitao Zhang, Wei Min, Zhiyao Chen, Yinan Shan, Yang Zhao, Ce Zhang

  • Rethinking Graph Neural Networks for Anomaly Detection (ICML) [Paper] [Code]

    Tang, Jianheng and Li, Jiajin and Gao, Ziqi and Li, Jia

  • H2-FDetector: A GNN-based Fraud Detector with Homophilic and Heterophilic Connections (WWW) [Paper] [Code]

    Shi, Fengzhao and Cao, Yanan and Shang, Yanmin and Zhou, Yuchen and Zhou, Chuan and Wu, Jia

2021

  • CaT-GNN: Enhancing Credit Card Fraud Detection with Causal Time Graph Neural Networks (TKDE) [Paper]

    Yifan Duan, Guibin Zhang, Shilong Wang, Xiaojiang Peng, Wang Ziqi, Junyuan Mao, Hao Wu, Xinke Jiang, Kun Wang

  • Towards Consumer Loan Fraud Detection: Graph Neural Networks with Role-Constrained Conditional Random Field (AAAI) [Paper]

    Bingbing Xu, Huawei Shen, Bing-Jie Sun, Rong An, Qi Cao, Xueqi Cheng

  • Modeling the Field Value Variations and Field Interactions Simultaneously for Fraud Detection (AAAI) [Paper]

    Dongbo Xi, Bowen Song, Fuzhen Zhuang, Yongchun Zhu, Shuai Chen, Tianyi Zhang, Yuan Qi, Qing He

  • Suspicious Massive Registration Detection via Dynamic Heterogeneous Graph Neural Networks (AAAI) [Paper]

    Susie Xi Rao, Shuai Zhang, Zhichao Han, Zitao Zhang, Wei Min, Mo Cheng, Yinan Shan, Yang Zhao, Ce Zhang

  • Pick and Choose: A GNN-based Imbalanced Learning Approach for Fraud Detection (WWW) [Paper] [Code]

    Liu, Yang and Ao, Xiang and Qin, Zidi and Chi, Jianfeng and Feng, Jinghua and Yang, Hao and He, Qing

  • FRAUDRE: Fraud Detection Dual-Resistant to Graph Inconsistency and Imbalance (ICDM) [Paper] [Code]

    Zhang, Ge and Wu, Jia and Yang, Jian and Beheshti, Amin and Xue, Shan and Zhou, Chuan and Sheng, Quan Z

2020

  • Graph Neural Network for Fraud Detection via Spatial-Temporal Attention (TKDE) [Paper] [Code]

    Dawei Cheng, Xiaoyang Wang, Ying Zhang, Liqing Zhang

  • Parallel granular neural networks for fast credit card fraud detection (APIN) [Paper]

    Syeda, M, Yan-Qing Zhang, Yi Pan

  • FlowScope: Spotting Money Laundering Based on Graphs (AAAI) [Paper] [Code]

    Xiangfeng Li, Shenghua Liu, Zifeng Li, Xiaotian Han, Chuan Shi, Bryan Hooi, He Huang, Xueqi Cheng

  • Competence of Graph Convolutional Networks for Anti-Money Laundering in Bitcoin Blockchain (ICML) [Paper]

    Ismail Alarab, Simant Prakoonwit, Mohamed Ikbal Nacer

  • Enhancing Graph Neural Network-based Fraud Detectors against Camouflaged Fraudsters (CIKM) [Paper] [Code]

    Dou, Yingtong and Liu, Zhiwei and Sun, Li and Deng, Yutong and Peng, Hao and Yu, Philip S.

  • FlowScope: Spotting Money Laundering Based on Graphs (AAAI) [Paper] [Code]

    Xiangfeng Li, Shenghua Liu, Zifeng Li, Xiaotian Han, Chuan Shi , Bryan Hooi, He Huang, Xueqi Cheng

2019

  • Uncovering insurance fraud conspiracy with network learning (SIGIR) [Paper]

    Chen Liang, Ziqi Liu, Bin Liu, Jun Zhou, Xiaolong Li, Shuang Yang, and Yuan Qi

  • Anti-Money Laundering in Bitcoin: Experimenting with Graph Convolutional Networks for Financial Forensics (SIGKDD) [Paper]

    Mark Weber, Giacomo Domeniconi, Jie Chen, Daniel Karl I. Weidele, Claudio Bellei, Tom Robinson, Charles E. Leiserson

  • Cash-Out User Detection Based on Attributed Heterogeneous Information Network with a Hierarchical Attention Mechanism (AAAI) [Paper]

    Binbin Hu, Zhiqiang Zhang, Chuan Shi, Jun Zhou, Xiaolong Li, Yuan Qi

  • Auto-encoder based Graph Convolutional Networks for Online Financial Anti-fraud (ICEFr) [Paper]

    Lv, Le and Cheng, Jianbo and Peng, Nanbo and Fan, Min and Zhao, Dongbin, Zhang, Jianhong

2018

  • Scalable Graph Learning for Anti-Money Laundering: A First Look (ArXiv) [Paper]

    Mark Weber, Jie Chen, Toyotaro Suzumura, Aldo Pareja, Tengfei Ma, Hiroki Kanezashi, Tim Kaler, Charles E. Leiserson, Tao B. Schardl

  • Heterogeneous Graph Neural Networks for Malicious Account Detection (CIKM) [Paper]

    Ziqi Liu, Chaochao Chen, Xinxing Yang, Jun Zhou, Xiaolong Li, and Le Song

2017

  • Graph Mining assisted Semi-supervised Learning for Fraudulent Cash-out Detection (KDD) [Paper]

    Yuan Li, Yiheng Sun, and Noshir Contractor

Related Topics

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