Machine Learning based Enterprise Financial Audit Framework and High Risk Identification
Tingyu Yuan, Xi Zhang, Xuanjing Chen

TL;DR
This paper introduces an AI-driven enterprise financial audit framework that leverages machine learning algorithms, especially Random Forest, to enhance risk detection, compliance, and fraud identification using real-world data from major accounting firms.
Contribution
It presents a novel machine learning-based framework for enterprise financial audits, evaluates multiple algorithms, and identifies key features for high-risk detection, improving audit efficiency and accuracy.
Findings
Random Forest outperforms other models with an F1-score of 0.9012.
Key predictors include audit frequency, past violations, and employee workload.
The framework supports real-time risk monitoring and decision-making.
Abstract
In the face of global economic uncertainty, financial auditing has become essential for regulatory compliance and risk mitigation. Traditional manual auditing methods are increasingly limited by large data volumes, complex business structures, and evolving fraud tactics. This study proposes an AI-driven framework for enterprise financial audits and high-risk identification, leveraging machine learning to improve efficiency and accuracy. Using a dataset from the Big Four accounting firms (EY, PwC, Deloitte, KPMG) from 2020 to 2025, the research examines trends in risk assessment, compliance violations, and fraud detection. The dataset includes key indicators such as audit project counts, high-risk cases, fraud instances, compliance breaches, employee workload, and client satisfaction, capturing both audit behaviors and AI's impact on operations. To build a robust risk prediction model,…
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Taxonomy
TopicsFinancial Distress and Bankruptcy Prediction · Auditing, Earnings Management, Governance · Imbalanced Data Classification Techniques
