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Enhancing Fraud Detection With AI in International Systems

Enhancing Fraud Detection With AI in International Systems
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Author(s): Mustafa Kayyali (Maaref University of Applied Sciences, Syria)
Copyright: 2026
Pages: 30
Source title: Enhancing Financial Decision-Making Through AI and Accounting Systems
Source Author(s)/Editor(s): Ionica Oncioiu (Titu Maiorescu University, Constanta, Romania)
DOI: 10.4018/979-8-3373-3626-8.ch006

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Abstract

Fraud, in its evolving digital forms, poses an immense challenge to global financial stability. This chapter explores how artificial intelligence, particularly machine learning, is reshaping the way fraud is detected and prevented across international financial systems. By tracing the shift from traditional rule-based approaches to dynamic, data-driven methods, the authors examine the integration of AI tools within diverse accounting frameworks. The chapter also navigates the ethical and legal complexities surrounding algorithmic oversight and cross-border data governance. In doing so, it presents a critical look at both the promise and peril of relying on intelligent systems in a domain as sensitive as financial integrity. Ultimately, this work advocates for a balanced, collaborative future—where innovation in fraud detection is met with global regulatory alignment and a firm commitment to transparency.

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