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Detecting fraudulent financial transactions is crucial for upholding the integrity of economic systems. Traditional methods often lag behind evolving fraud tactics, prompting the need for innovative approaches. We propose a pioneering framework combining Graph Neural Networks (GNNs) with anomaly detection techniques to enhance fraud detection. Transactions are represented as graphs, allowing GNNs to capture intricate fraud patterns. Anomaly detection methods flag suspicious transactions. Experimentation on the widely used Credit Card Fraud Detection dataset, comprising transactions made by European cardholders, showcases substantial advancements over baseline methods. The dataset is highly unbalanced, with fraudulent transactions accounting for only 0.172% of all transactions. Our approach achieves a detection rate of 95% with a false positive rate of 2%, surpassing the performance of the current state-of- the-art Gradient Boosting Classifier by 10%. It exhibits resilience against various fraud schemes, including account takeover and identity theft. Ablation studies underscore the significance of graphbased representations and anomaly detection mechanisms. Our research underscores the efficacy of GNNs and anomaly detection in bolstering financial fraud detection, presenting a promising solution against sophisticated fraudulent activities..
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M. Thilagavathi
R. Saranyadevi
Nandita Vijayakumar
B.S. Abdur Rahman Crescent Institute of Science & Technology
Dr. M.G.R. Educational and Research Institute
R.M.D. Engineering College
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Thilagavathi et al. (Fri,) studied this question.
www.synapsesocial.com/papers/68e6d598b6db643587652f6f — DOI: https://doi.org/10.1109/icstem61137.2024.10560838