利用机器学习预测重大错报

Predicting Material Misstatements Using Machine Learning

Accounting Review · 2025
被引 7 · 同刊同年前 7%
人大 A+FT50UTD24ABS 4*

中文导读

用机器学习模型预测未来重大错报,模型优于基准,能帮助投资者、管理者、审计师和监管者提前应对风险。

Abstract

ABSTRACT This study uses machine learning models to forecast future material misstatements. Using raw financial data, audit variables, qualitative features, and an efficient algorithm, we design a dynamic model that continuously updates with new information. Our model outperforms the benchmarks for both one-year-ahead and two-year-ahead predictions in terms of out-of-sample predictive power and economic impact on net income. Using Explainable Artificial Intelligence, we identify key predictive features, including comprehensive income, foreign firm status, and accrued interest and penalties from unrecognized tax benefits. Results show that investors achieve better outcomes using a proactive investment strategy based on our prediction models than reactive detection models. Furthermore, our prediction model can help managers prevent internal control weaknesses, assist auditors in assessing misstatement risks in advance, and enable regulators to allocate inspection resources proactively. Our study advances the literature by moving beyond the detection of past material misstatements to the forecasting of future misstatements. Data Availability: Publicly available. JEL Classifications: M41; M42.

机器学习财务错报预测可解释人工智能预测特征