1 Department of Computer Science, Maharishi International University.
2 Department of Computer Science, University of Texas at Tyler.
3 School of Business and Technology, Emporia State University.
International Journal of Science and Research Archive, 2022, 05(01), 207-221
Article DOI: 10.30574/ijsra.2022.5.1.0026
Received on 17 December 2021; revised on 22 January 2022; accepted on 25 January 2022
Detecting fraud in dynamic transaction networks presents major obstacles owing to the computational demands and the constantly changing patterns of fraudulent behavior. We propose a Dynamic Task Prioritization Meta-GNN (DTP-MetaGNN) framework merging meta-reinforcement learning (meta-RL) and adaptive graph sparsification to tackle these challenges. The framework dynamically prioritizes tasks according to emerging fraud patterns, which results in efficient meta-training and decreased computational overhead by means of edge reduction and sparse attention mechanisms. A meta-RL policy guides task sampling by weighting high-volatility fraud scenarios, where the policy’s reward function balances detection accuracy and novelty. Furthermore, the framework applies a real-time edge reduction method to trim transaction graphs while preserving only the most meaningful links. DTP-MetaGNN relies on a Temporal Graph Neural Network (T-GNN) equipped with sparse attention, which handles the sparsified graph to produce node embeddings and adjusts through meta-learning. The proposed method connects smoothly with standard transaction network components, including graph formation and attribute derivation. Principal advancements consist of merging meta-reinforcement learning-driven task prioritization with dynamic graph sparsification, executed via Proximal Policy Optimization (PPO) and Temporal Graph Attention Networks (TGAT). Experimental findings show DTP-MetaGNN attains better performance in fraud detection with a notable decrease in computational expenses. This study pushes the boundaries of current research by introducing a scalable and adaptable approach for high-speed transaction systems.
Fraud Detection; Graph Neural Networks (GNNs); Meta-Reinforcement Learning (Meta-RL); Dynamic Task Prioritization; Graph Sparsification; Temporal Graph Networks (TGN / TGAT)
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Mohammed Mahbubur Rahaman, Bidhan Biswas and Md Sazzad Hossain. Dynamic Task Prioritization in Meta-GNN (Graph Neural Networks) for Fraud Detection: A meta-reinforcement learning approach with adaptive graph sparsification. International Journal of Science and Research Archive, 2022, 05(01), 207-221. Article DOI: https://doi.org/10.30574/ijsra.2022.5.1.0026.






