Financial fraud remains a significant challenge in the global banking sector, particularly in economies like China, where digital transactions are rapidly increasing. With the widespread adoption of digital banking, mobile payments, and online financial services, traditional fraud detection methods have struggled to keep pace with increasingly sophisticated fraudulent schemes. In response, Artificial Intelligence (AI) and Machine Learning (ML) have emerged as transformative tools, offering real-time fraud detection, predictive analytics, and enhanced risk management capabilities. This study examines the integration of AI and ML in fraud detection and prevention, with a particular focus on their impact within the Bank of China (BOC). By analyzing secondary data from BOC’s annual reports, financial stability assessments, and regulatory publications, this research highlights the effectiveness of AI-driven fraud detection systems in improving accuracy, reducing false positives, and enhancing operational efficiency. The implementation of AI-powered solutions has enabled BOC to optimize resource allocation, lower investigation costs, and achieve significant financial savings, ultimately strengthening its fraud prevention framework. Despite these advancements, the adoption of AI in fraud detection presents challenges, including data privacy concerns, ethical considerations, and evolving regulatory requirements. To maximize the potential of AI-driven fraud prevention, continuous investment in AI model refinement, employee training, and regulatory compliance is essential. The findings underscore the pivotal role of AI and ML in reinforcing banking security, mitigating financial fraud risks, and ensuring the long-term resilience of China’s digital banking sector.
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Zepeng Shen
Highlights in Business Economics and Management
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Zepeng Shen (Tue,) studied this question.
www.synapsesocial.com/papers/68af521fad7bf08b1ead9ecb — DOI: https://doi.org/10.54097/0jvtcj82