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Decision information for auditors to assess litigation risk: Application of machine learning techniques
2022
Corporate Ownership and Control
Fraud cases have become more common in recent years, highlighting the role of auditors' legal liability. The competent authorities have called for stricter control and disciplinary measures for auditors, increasing auditors' legal liability and litigation risk. This study used machine learning (ML) techniques to construct a litigation warning model for auditors to assess audit risk when they evaluate whether accept or terminate an engagement, thus improving audit quality and preventing losses
doi:10.22495/cocv19i3art10
fatcat:szjlfmonljhd7newrz5n35oe6q