Dynamic risk modeling in financial reporting: Conceptualizing predictive audit frameworks
1 Independent Researcher, Toronto, Ontario, Canada.
2 Independent Researcher, Canada.
3 Independent Researcher, NJ, United States of America.
Review
International Journal of Frontline Research in Multidisciplinary Studies, 2022, 01(02), 094-112.
Article DOI: 10.56355/ijfrms.2022.1.2.0057
Publication history:
Received on 29 September 2022; revised on 18 November 2022; accepted on 22 November 2022
Abstract:
Dynamic risk modeling in financial reporting has emerged as a transformative approach to enhance the accuracy, transparency, and reliability of audits in an increasingly complex financial environment. This study conceptualizes a predictive audit framework that integrates advanced technologies, such as machine learning (ML) and artificial intelligence (AI), to identify, assess, and mitigate financial risks in real time. Traditional audit processes often rely on static evaluations, which fail to account for evolving risk factors and data interdependencies. Predictive audit frameworks, by contrast, employ dynamic risk modeling to anticipate potential anomalies and irregularities, enabling proactive interventions and improving decision-making accuracy. The framework leverages predictive analytics to analyze historical data trends, identify potential risk exposures, and model future scenarios. Advanced tools like natural language processing (NLP) are employed to extract actionable insights from unstructured financial data, while neural networks detect subtle patterns indicative of fraud or compliance breaches. Additionally, real-time monitoring systems enhance auditors’ ability to track financial operations and identify irregularities as they occur. The proposed framework emphasizes the importance of adaptive algorithms that self-improve based on incoming data, ensuring continuous relevance in fluctuating financial landscapes. It also integrates governance, risk, and compliance (GRC) considerations to align with evolving regulatory requirements, fostering stakeholder trust and transparency. Case studies demonstrate the framework's applicability in diverse financial sectors, showcasing its potential to mitigate financial misstatements and ensure compliance with International Financial Reporting Standards (IFRS). By conceptualizing predictive audit frameworks, this research underscores the critical role of dynamic risk modeling in enhancing financial reporting's integrity. It highlights the shift from reactive to proactive auditing practices, advocating for a data-driven approach to risk management. This study offers valuable insights for auditors, regulatory bodies, and financial institutions seeking innovative solutions to address contemporary challenges in financial reporting.
Keywords:
Dynamic Risk Modeling; Financial Reporting; Predictive Audit Framework; Machine Learning; Artificial Intelligence; Real-Time Monitoring; Governance Risk and Compliance; International Financial Reporting Standards
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