MACHINE LEARNING AS THE AUDITOR OF THE FUTURE: AUTOMATED PREDICTION OF ACCOUNTING RISKS AND IRREGULARITIES
DOI:
https://doi.org/10.56238/revgeov16n5-250Keywords:
Accounting 4.0, Predictive Auditing, Machine Learning, Accounting Risks, Accounting IrregularitiesAbstract
The digital transformation and Accounting 4.0 have driven the adoption of advanced data analytics techniques in auditing and accounting control, particularly through the use of machine learning algorithms. This study aims to assess the predictive capability of machine learning models in identifying accounting risks and irregularities in Brazilian publicly traded companies, contributing to the consolidation of predictive auditing as an evolution of traditional audit practices. To this end, the analysis is based on economic and financial data, performance indicators, earnings quality measures, and textual features extracted from notes to the financial statements, covering the period from 2010 to 2024. Several supervised algorithms, including ensemble learning models, were trained and evaluated using cross-validation and performance metrics such as accuracy, F1-score, and area under the ROC curve. The results show that ensemble-based models outperform traditional statistical methods in predicting accounting irregularities, especially when numerical information is combined with textual disclosures, reinforcing the potential of artificial intelligence as a support tool for continuous auditing and risk management. From a theoretical perspective, the study advances the understanding of how Accounting 4.0, predictive auditing, and machine learning can be integrated into a coherent analytical framework. From a practical standpoint, it provides insights for the development of automated accounting monitoring systems that are more efficient, preventive, and aligned with contemporary demands for governance and transparency.
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