Integrating Multidimensional Big Data Analytics with Dynamic Financial Risk Assessment to Strengthen Decision-Making Frameworks
Keywords:
Big data analytics, nancial risk assessment, fi, decision-making frameworks, multidimensional analysis, dynamic modelingAbstract
The integration of multidimensional big data analytics with dynamic financial risk assessment has become pivotal in enhancing decision-making frameworks across industries. This study explores the synergy between advanced analytics techniques and financial risk management, leveraging historical and predictive data to optimize decision accuracy and efficiency. A conceptual framework is developed, highlighting the interplay between data dimensions, financial indicators, and adaptive modeling. The findings emphasize the transformative potential of big data analytics in financial decision-making, offering significant implications for policymakers and organizations.
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