RMGANets: reinforcement learning-enhanced multi-relational attention graph-aware network for anti-money laundering detection

Abstract Given the anonymity and complexity of illegal transactions, traditional deep-learning methods struggle to establish correlations between transaction addresses, cash flows, and physical users. Additionally, the limited number of labels for illegal transactions results in severe class imbalan...

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Main Authors: Qianyu Wang, Wei-Tek Tsai, Bowen Du
Format: Article
Language:English
Published: Springer 2024-11-01
Series:Complex & Intelligent Systems
Subjects:
Online Access:https://doi.org/10.1007/s40747-024-01615-9
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author Qianyu Wang
Wei-Tek Tsai
Bowen Du
author_facet Qianyu Wang
Wei-Tek Tsai
Bowen Du
author_sort Qianyu Wang
collection DOAJ
description Abstract Given the anonymity and complexity of illegal transactions, traditional deep-learning methods struggle to establish correlations between transaction addresses, cash flows, and physical users. Additionally, the limited number of labels for illegal transactions results in severe class imbalance and other challenges. To overcome these limitations, we propose a reinforcement learning-enhanced, multi-relational, attention graph-aware framework to detect anti-money laundering and illegal trading activities. On the one hand, a data-driven, graph-aware layer establishes long-term dependencies and correlations between transaction graph nodes. Similarity among graph nodes divides the topological graph into three subgraphs. Learning from these subgraphs and converging nodes enriches local, global, and contextual details. Simultaneously, using repeated nodes across the subgraphs enhances interactivity between them, reduces intra-class ambiguity, and accentuates inter-class differences. On the other hand, a reinforcement learning module embedded in the graph-aware layer compensates for the missing details in node features caused by masking operations. Furthermore, the reconstructed loss function addresses significant classification inaccuracies by reducing the weight assigned to easily classified samples. Balancing these issues and individually supervising each component enables the detection framework to achieve optimal performance. The evaluation results demonstrate that our proposed model exhibits optimal detection performance and robustness, such as F1 of 93.85% and 94.39%.
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issn 2199-4536
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publishDate 2024-11-01
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spelling doaj-art-ee350231b29f44b1a4911c0ea74a1df82025-02-02T12:49:37ZengSpringerComplex & Intelligent Systems2199-45362198-60532024-11-0111111710.1007/s40747-024-01615-9RMGANets: reinforcement learning-enhanced multi-relational attention graph-aware network for anti-money laundering detectionQianyu Wang0Wei-Tek Tsai1Bowen Du2State Key Laboratory of Software Development Environment, Beihang UniversityCollege of Computer and Data Science, Fuzhou UniversityState Key Laboratory of Software Development Environment, Beihang UniversityAbstract Given the anonymity and complexity of illegal transactions, traditional deep-learning methods struggle to establish correlations between transaction addresses, cash flows, and physical users. Additionally, the limited number of labels for illegal transactions results in severe class imbalance and other challenges. To overcome these limitations, we propose a reinforcement learning-enhanced, multi-relational, attention graph-aware framework to detect anti-money laundering and illegal trading activities. On the one hand, a data-driven, graph-aware layer establishes long-term dependencies and correlations between transaction graph nodes. Similarity among graph nodes divides the topological graph into three subgraphs. Learning from these subgraphs and converging nodes enriches local, global, and contextual details. Simultaneously, using repeated nodes across the subgraphs enhances interactivity between them, reduces intra-class ambiguity, and accentuates inter-class differences. On the other hand, a reinforcement learning module embedded in the graph-aware layer compensates for the missing details in node features caused by masking operations. Furthermore, the reconstructed loss function addresses significant classification inaccuracies by reducing the weight assigned to easily classified samples. Balancing these issues and individually supervising each component enables the detection framework to achieve optimal performance. The evaluation results demonstrate that our proposed model exhibits optimal detection performance and robustness, such as F1 of 93.85% and 94.39%.https://doi.org/10.1007/s40747-024-01615-9Anti-money launderingAssociation relationshipsLong-term dependenciesReinforcement learning
spellingShingle Qianyu Wang
Wei-Tek Tsai
Bowen Du
RMGANets: reinforcement learning-enhanced multi-relational attention graph-aware network for anti-money laundering detection
Complex & Intelligent Systems
Anti-money laundering
Association relationships
Long-term dependencies
Reinforcement learning
title RMGANets: reinforcement learning-enhanced multi-relational attention graph-aware network for anti-money laundering detection
title_full RMGANets: reinforcement learning-enhanced multi-relational attention graph-aware network for anti-money laundering detection
title_fullStr RMGANets: reinforcement learning-enhanced multi-relational attention graph-aware network for anti-money laundering detection
title_full_unstemmed RMGANets: reinforcement learning-enhanced multi-relational attention graph-aware network for anti-money laundering detection
title_short RMGANets: reinforcement learning-enhanced multi-relational attention graph-aware network for anti-money laundering detection
title_sort rmganets reinforcement learning enhanced multi relational attention graph aware network for anti money laundering detection
topic Anti-money laundering
Association relationships
Long-term dependencies
Reinforcement learning
url https://doi.org/10.1007/s40747-024-01615-9
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AT weitektsai rmganetsreinforcementlearningenhancedmultirelationalattentiongraphawarenetworkforantimoneylaunderingdetection
AT bowendu rmganetsreinforcementlearningenhancedmultirelationalattentiongraphawarenetworkforantimoneylaunderingdetection