Using machine learning to predict auditor switches: How the likelihood of switching affects audit quality among non-switching clients

Journal of Accounting and Public Policy - Tập 40 - Trang 106785 - 2021
Joshua O.S. Hunt1, David M. Rosser2, Stephen P. Rowe3
1Mississippi State University, United States
2University of Texas at Arlington, United States
3University of Arkansas, United States

Tài liệu tham khảo

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