Polytope Fraud Theory

Zhao D, Wang Z, Schweizer-Gamborino F, Sornette D (Draft)
Elsevier BV.

Diskussionspapier | Entwurf | Englisch
 
Download
OA 5.83 MB
Autor*in
Zhao, Dongshuai; Wang, ZhongliUniBi ; Schweizer-Gamborino, Florian; Sornette, Didier
Abstract / Bemerkung
Polytope Fraud Theory (PFT) extends the existing triangle and diamond theories of accounting fraud with ten abnormal financial practice alarms that a fraudulent firm might trigger. These warning signals are identified through evaluation of the shorting behavior of sophisticated activist short sellers, which are used to train several supervised machine-learning methods in detecting financial statement fraud using published accounting data. Our contributions include a systematic manual collection and labeling of companies that are shorted by professional activist short sellers. We also combine well-known asset pricing factors with accounting red flags in financial features selections. Using 80 percent of the data for training and the remaining 20 percent for out-of-sample test and performance assessment, we find that the best method is XGBoost, with a Recall of 79 percent and F1-score of 85 percent. Other methods have only slightly lower performance, demonstrating the robustness of our results. This shows that the sophisticated activist short sellers, from whom the algorithms are learning, have excellent accounting insights, tremendous forensic analytical knowledge, and sharp business acumen. Our feature importance analysis indicates that potential short-selling targets share many similar financial characteristics, such as bankruptcy or financial distress risk, clustering in some industries, inconsistency of profitability, high accrual, and unreasonable business operations. Our results imply the possible automation of advanced financial statement analysis, which can both improve auditing processes and effectively enhance investment performance. Finally, we propose the Unified Investor Protection Framework, summarizing and categorizing investor-protection related theories from the macro-level to the micro-level.
Stichworte
fraud risk assessment; financial fraud; fraud detection; machine learning
Erscheinungsjahr
2022
eISSN
1556-5068
Page URI
https://pub.uni-bielefeld.de/record/2987967

Zitieren

Zhao D, Wang Z, Schweizer-Gamborino F, Sornette D. Polytope Fraud Theory. Elsevier BV; Draft.
Zhao, D., Wang, Z., Schweizer-Gamborino, F., & Sornette, D. (Draft). Polytope Fraud Theory. Elsevier BV. https://doi.org/10.2139/ssrn.4115679
Zhao, Dongshuai, Wang, Zhongli, Schweizer-Gamborino, Florian, and Sornette, Didier. Draft. Polytope Fraud Theory. Elsevier BV.
Zhao, D., Wang, Z., Schweizer-Gamborino, F., and Sornette, D. (Draft). Polytope Fraud Theory. Elsevier BV.
Zhao, D., et al., Draft. Polytope Fraud Theory, Elsevier BV.
D. Zhao, et al., Polytope Fraud Theory, Elsevier BV, Draft.
Zhao, D., Wang, Z., Schweizer-Gamborino, F., Sornette, D.: Polytope Fraud Theory. Elsevier BV (Draft).
Zhao, Dongshuai, Wang, Zhongli, Schweizer-Gamborino, Florian, and Sornette, Didier. Polytope Fraud Theory. Elsevier BV, Draft.
Alle Dateien verfügbar unter der/den folgenden Lizenz(en):
Creative Commons Namensnennung 4.0 International Public License (CC-BY 4.0):
Volltext(e)
Access Level
OA Open Access
Zuletzt Hochgeladen
2024-03-25T15:45:45Z
MD5 Prüfsumme
4ebd1a231abf3850cf7ee9402774e5af

Zusatzmaterial
Name
Intelligent_with_data.zip 13.78 MB
Titel
Codes and data
Access Level
Campus/VPN UniBi Only
Zuletzt Hochgeladen
2024-03-25T15:40:48Z
MD5 Prüfsumme
66542340bc0659a1520e1d3a658b9854

Export

Markieren/ Markierung löschen
Markierte Publikationen

Open Data PUB

Suchen in

Google Scholar