关键审计事项的信息含量:基于人工智能文本分析的证据

The informational content of key audit matters: Evidence from using artificial intelligence in textual analysis

Contemporary Accounting Research · 2025
被引 2
人大 A-FT50ABS 4

中文导读

利用深度学习模型FinBERT分析关键审计事项文本,发现商誉相关事项能预测企业未来减值,且预测力超越其他财务指标,对审计师和投资者评估风险有参考价值。

Abstract

Abstract This study provides empirical evidence that key audit matters (KAMs) are informative for future negative accounting outcomes. We employ FinBERT—a deep learning model designed for natural language processing that allows human‐like text comprehension—to demonstrate that goodwill‐related KAMs are predictive of firms' future impairments. Our findings reveal that utilizing KAMs as a stand‐alone predictor for future impairments provides meaningful predictive power. By exploring the semantic content of reported KAMs, we find that their predictive power is primarily driven by text passages covering how both the firm and the auditor exercise judgment in the accounting and auditing of goodwill. Furthermore, we show that KAMs are incrementally predictive beyond several firm‐level determinants and disclosures in annual reports. Finally, our additional analyses indicate that (1) KAM‐predicted impairment probabilities are relevant to capital markets, (2) KAMs are useful for predicting the magnitude of goodwill impairments, and (3) the predictive power extends to other KAM topics. Collectively, our findings enhance the understanding of the informational content of KAMs, which is a key rationale for their introduction.

关键审计事项信息含量商誉减值FinBERT