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Financial fraud is an increasing concern for both organizations and consumers as digital financial transactions become more prevalent. This presentation offers a comprehensive introduction to the computerized identification of fraudulent activity within financial transactions, examining the methods and technological advancements utilized to prevent such actions. The research explores the evolution of fraud detection systems, demonstrating how advanced automated frameworks leveraging machine learning (ML) and artificial intelligence (AI) algorithms including XGB and Random Forest have superseded more rudimentary human review processes. It illustrates the critical role data analytics performs in evaluating immense volumes of transactional data to identify potential markers of fraud. Additionally, it emphasizes the importance of collaboration between financial institutions, regulatory bodies, and information technology companies to develop robust and efficacious fraud defense systems. The study also focuses on the advantages automated fraud identification solutions hold over more conventional approaches, including improved accuracy, efficiency, and cost-effectiveness. The ongoing advancement of the automated fraud detection field is highlighted as vital, with technologies such as explainable AI simplifying the comprehension of decision-making workflows and promoting transparent communication between stakeholders.
Tamanna et al. (Fri,) studied this question.