Identification of fraudulent financial statements through a multi-label classification approach
Year of publication: |
2024
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Authors: | Tragouda, Maria ; Doumpos, Michael ; Zopounidis, Constantin |
Published in: |
Intelligent systems in accounting, finance & management. - New York, NY [u.a.] : Wiley, ISSN 2160-0074, ZDB-ID 2379344-2. - Vol. 31.2024, 2, Art.-No. e1564, p. 1-19
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Subject: | corporate financial fraud | data mining | falsified financial statements | fraud diamond | multi-label classification | Data Mining | Data mining | Betrug | Fraud | Bilanzdelikt | Accounting fraud | Klassifikation | Classification | Bilanzanalyse | Financial statement analysis | Jahresabschluss | Financial statement | Wirtschaftskriminalität | Economic crime |
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