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Hauptverfasser: Jiang, Jiaxin, Yao, Siyuan, Li, Yuchen, Wang, Qiange, He, Bingsheng, Chen, Min
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2504.09311
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author Jiang, Jiaxin
Yao, Siyuan
Li, Yuchen
Wang, Qiange
He, Bingsheng
Chen, Min
author_facet Jiang, Jiaxin
Yao, Siyuan
Li, Yuchen
Wang, Qiange
He, Bingsheng
Chen, Min
contents Detecting fraudulent activities in financial and e-commerce transaction networks is crucial. One effective method for this is Densest Subgraph Discovery (DSD). However, deploying DSD methods in production systems faces substantial scalability challenges due to the predominantly sequential nature of existing methods, which impedes their ability to handle large-scale transaction networks and results in significant detection delays. To address these challenges, we introduce Dupin, a novel parallel processing framework designed for efficient DSD processing in billion-scale graphs. Dupin is powered by a processing engine that exploits the unique properties of the peeling process, with theoretical guarantees on detection quality and efficiency. Dupin provides userfriendly APIs for flexible customization of DSD objectives and ensures robust adaptability to diverse fraud detection scenarios. Empirical evaluations demonstrate that Dupin consistently outperforms several existing DSD methods, achieving performance improvements of up to 100 times compared to traditional approaches. On billion-scale graphs, Dupin demonstrates the potential to enhance the prevention of fraudulent transactions from 45% to 94.5% and reduces density error from 30% to below 5%, as supported by our experimental results. These findings highlight the effectiveness of Dupin in real-world applications, ensuring both speed and accuracy in fraud detection.
format Preprint
id arxiv_https___arxiv_org_abs_2504_09311
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Dupin: A Parallel Framework for Densest Subgraph Discovery in Fraud Detection on Massive Graphs (Technical Report)
Jiang, Jiaxin
Yao, Siyuan
Li, Yuchen
Wang, Qiange
He, Bingsheng
Chen, Min
Databases
Detecting fraudulent activities in financial and e-commerce transaction networks is crucial. One effective method for this is Densest Subgraph Discovery (DSD). However, deploying DSD methods in production systems faces substantial scalability challenges due to the predominantly sequential nature of existing methods, which impedes their ability to handle large-scale transaction networks and results in significant detection delays. To address these challenges, we introduce Dupin, a novel parallel processing framework designed for efficient DSD processing in billion-scale graphs. Dupin is powered by a processing engine that exploits the unique properties of the peeling process, with theoretical guarantees on detection quality and efficiency. Dupin provides userfriendly APIs for flexible customization of DSD objectives and ensures robust adaptability to diverse fraud detection scenarios. Empirical evaluations demonstrate that Dupin consistently outperforms several existing DSD methods, achieving performance improvements of up to 100 times compared to traditional approaches. On billion-scale graphs, Dupin demonstrates the potential to enhance the prevention of fraudulent transactions from 45% to 94.5% and reduces density error from 30% to below 5%, as supported by our experimental results. These findings highlight the effectiveness of Dupin in real-world applications, ensuring both speed and accuracy in fraud detection.
title Dupin: A Parallel Framework for Densest Subgraph Discovery in Fraud Detection on Massive Graphs (Technical Report)
topic Databases
url https://arxiv.org/abs/2504.09311