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The financial sector is increasingly turning to predictive analytics to enhance the accuracy and efficacy of risk assessment processes. This shift marks a significant evolution from traditional, historical data-dependent models to sophisticated, AI-driven techniques capable of analyzing vast and complex datasets. This paper delves into the strategic applications of predictive analytics in financial risk assessment, focusing on its transformative impact across various domains, including credit risk, market risk, and operational risk. The study also examines the broader sector-wide implications, particularly in terms of regulatory compliance and market stability. Key findings reveal that predictive analytics not only improves the precision and adaptability of risk management practices but also facilitates more accurate, timely, and dynamic risk assessments. These advancements enable financial institutions to better anticipate and mitigate risks, thereby contributing to greater financial stability and more informed decision-making. The implications of these findings are profound, offering insights into how predictive analytics can be leveraged to meet the evolving demands of the financial industry and regulatory landscapes.
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Janifer Nahar
Md. Shakawat Hossain
Md Mostafizur Rahman
Louisiana State University
Lamar University
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Nahar et al. (Wed,) studied this question.
www.synapsesocial.com/papers/68e68e76b6db643587615761 — DOI: https://doi.org/10.62304/jbedpm.v3i4.148