Predicting tax fraud using supervised machine learning approach
Year of publication: |
2023
|
---|---|
Authors: | Murorunkwere, Belle Fille ; Haughton, Dominique ; Nzabanita, Joseph ; Kipkogei, Francis ; Kabano, Ignace |
Published in: |
African journal of science, technology, innovation and development : AJSTID. - London : Routledge, Taylor & Francis, ISSN 2042-1346, ZDB-ID 2744522-7. - Vol. 15.2023, 6, p. 731-742
|
Subject: | evaluation metrics | features importance | fraud detection | supervised machine-learning models | tax fraud | Betrug | Fraud | Steuerstrafrecht | Criminal tax law | Künstliche Intelligenz | Artificial intelligence | Theorie | Theory | Bilanzdelikt | Accounting fraud |
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