Published August 29, 2024 | Version v1
Journal article Open

AI-Powered Fraud Detection in Financial Transactions: Enhancing Real-Time Risk Management

Description

Background: Financial fraud has grown in scale and sophistication with the rise of digital banking and online payments. Recent industry analyses estimate that online payment fraud will cost over $200 billion globally from 2020 to 2024 (Juniper Research, 2020). Traditional rule-based fraud detection systems struggle to keep pace with evolving fraud patterns and often generate many false positives, creating an urgent need for more adaptive and intelligent real-time detection solutions. Objective: This study aims to improve fraud detection accuracy and speed by leveraging advanced artificial intelligence (AI) models. We investigate which AI techniques, ranging from machine learning to deep learning,  are most effective for high-volume, fast-streaming financial transaction data, and how they can be integrated into real-time risk management.

Methods: We designed an experimental framework using benchmark transaction datasets (including an anonymized credit card dataset with 0.17% fraud rate) to train and evaluate various AI models. Our approach combines supervised learning (e.g., Random Forest, XGBoost) and deep learning models (Long Short-Term Memory networks for temporal sequences, autoencoder for anomaly detection), deployed within a streaming analytics pipeline for real-time processing. Key features (transaction time, amount, location, device ID, etc.) were engineered to capture transactional and behavioral patterns. Models were assessed with precision, recall, F1-score, ROC-AUC, and latency, and we ensured compliance with data privacy and fairness guidelines (e.g., GDPR) throughout.

Results: The AI models significantly outperformed baseline rule-based detection, achieving higher fraud catch rates and lower false alarms. For instance, a trained LSTM model attained an AUC above 0.98 with real-time detection latency under 200ms, improving the fraud detection rate by over 20% compared to traditional methods. An ensemble hybrid model reduced false positives by approximately 30% (compared to a static rule system) while maintaining over 75% recall, aligning with recent findings that machine learning can cut fraud losses by more than 50% under fixed false-positive constraints (Vanini et al., 2023).

Conclusion: AI-driven fraud detection can dramatically strengthen real-time risk management for financial institutions. By deploying adaptive models that learn complex fraud patterns on the fly, banks and payment processors can identify fraudulent transactions instantaneously, minimizing losses and safeguarding customer trust. The study’s framework, which integrates explainable AI and streaming analytics, offers a blueprint for next-generation fraud detection systems.

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