A Robust Deep Learning Framework for Adversarially Resilient Fraud Detection and Analytical Modeling
Keywords:
Robust deep learning, fraud detection, adversarial machine learning, evasion attacks, data poisoning, and financial security.Abstract
The increasing complexity of financial fraud techniques and the widespread usage of AI-driven detection tools have raised the risks associated with adversarial attacks. The sophistication and frequency of fraud have increased due to the quick development of financial technologies, endangering the essential financial foundation and eroding public trust in financial institutions. Traditional rule-based detection methods are no longer able to detect abnormalities that happen in real time due to the intricacy of fraud strategies and the increasing amount of activities. This project will focus on the possible uses of AI and ML to increase cyber security flexibility and identify fraud and irregularities in financial transactions. Additionally, anomaly ratings and trust estimation methods are implemented to detect strange inputs that may indicate adversary control. These findings confirm that both AI and ML are capable of modeling latent fraud trends in real-time, reducing the false positive rate, and generating informative data that legal authorities can comprehend in order to reduce financial organizations' risks beforehand. Organizations may optimize their safety and resource utilization, as well as respond dynamically to evolving risks, by integrating intelligent detection systems into their financial operations. Because of this, the study places a strong emphasis on the need to incorporate temporal and geo-behavioral features in order to improve model performance and make them context-friendly. Future research will focus on real-time deployments, continuous data analysis, elements of resistance against opponents, and ethical acceptance of AI-based decision-making.




