AI-Based Fraud Detection and Prevention Mechanisms in Digital Banking: A Real-World Case Study Analysis
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Keywords

artificial intelligence
fraud detection

How to Cite

[1]
Venkata Siva Prakash Nimmagadda, “AI-Based Fraud Detection and Prevention Mechanisms in Digital Banking: A Real-World Case Study Analysis”, Journal of AI in Healthcare and Medicine, vol. 2, no. 1, pp. 304–341, Feb. 2022, Accessed: Nov. 21, 2024. [Online]. Available: https://healthsciencepub.com/index.php/jaihm/article/view/91

Abstract

In the evolving landscape of digital banking, the prevalence of fraudulent activities poses significant challenges to financial institutions, necessitating the development of advanced fraud detection and prevention mechanisms. This paper delves into the application of artificial intelligence (AI) in enhancing the efficacy of fraud detection and prevention systems within the realm of digital banking. With the integration of AI technologies, banks and financial institutions can leverage sophisticated algorithms and machine learning models to identify and mitigate fraudulent activities more effectively than traditional methods.

The study presents a comprehensive analysis of AI-based fraud detection mechanisms, focusing on the deployment of various machine learning techniques such as supervised learning, unsupervised learning, and deep learning algorithms. These techniques enable the processing and analysis of vast amounts of transaction data to detect anomalous patterns indicative of potential fraud. The paper evaluates the performance of these AI-driven systems through real-world case studies, highlighting their effectiveness in various operational contexts.

Real-world case studies form a cornerstone of this analysis, providing empirical evidence of AI’s impact on fraud prevention in digital banking. These case studies encompass diverse scenarios including credit card fraud detection, identity theft prevention, and money laundering activities. By examining the implementation of AI-based systems in these contexts, the paper underscores the practical benefits and challenges associated with their use. It also explores the role of AI in enhancing predictive accuracy, reducing false positives, and improving overall fraud detection efficiency.

Furthermore, the paper discusses the integration of AI technologies with existing banking systems and the implications for operational workflows. The transition to AI-based systems involves addressing several technical and logistical challenges, such as data quality, algorithmic bias, and system interoperability. The analysis provides insights into how these challenges can be mitigated through robust data management practices and continuous model training.

The research also considers the ethical and regulatory aspects of AI in fraud detection. It examines how compliance with data protection regulations and ethical standards is maintained while utilizing AI technologies for fraud prevention. The balance between leveraging advanced analytics and ensuring privacy and fairness is critically assessed.

This paper offers an in-depth exploration of AI-based fraud detection and prevention mechanisms in digital banking, providing a detailed analysis of real-world applications and performance outcomes. It highlights the transformative potential of AI in combating fraud and outlines the practical considerations for successful implementation. The findings contribute valuable insights into the evolving field of fraud detection and offer guidance for future advancements in AI-driven security measures.

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