Detail publikačního výsledku

SME Bankruptcy Prediction Using Convolutional Neural Networks

REŽŇÁKOVÁ, M.; PĚTA, J.; ŠEBESTOVÁ, M.; DOSTÁL, P.

Originální název

SME Bankruptcy Prediction Using Convolutional Neural Networks

Anglický název

SME Bankruptcy Prediction Using Convolutional Neural Networks

Druh

Článek WoS

Originální abstrakt

Failure to repay obligations to creditors, whether credit institutions or business partners, causes serious economic problems not only for the debtor but also for its stakeholders. Preventing this problem requires identifying the potential threat. This paper explores the potential use of Convolutional Neural Networks (CNN) in identifying businesses at risk of bankruptcy. It is based on a graphical representation of differences in company performance and selected macroeconomic indicators. In our research, we used the GoogLeNet neural network architecture. The approach used allowed to display the financial situation of a company so that the generated CNN could identify active companies and companies at risk of bankruptcy with high accuracy. The procedure was applied to data of companies operating in the construction industry in the Czech Republic. The accuracy of the model was evaluated using receiver operating characteristic (ROC) curve and area under the curve (AUC). The use of CNN has yielded high forecast accuracy, demonstrating the ability to efficiently process graphical displays of financial data and capture differences between healthy and risky companies. The indicators identified in the constructed model can be used as input variables in an early warning system for financial distress.

Anglický abstrakt

Failure to repay obligations to creditors, whether credit institutions or business partners, causes serious economic problems not only for the debtor but also for its stakeholders. Preventing this problem requires identifying the potential threat. This paper explores the potential use of Convolutional Neural Networks (CNN) in identifying businesses at risk of bankruptcy. It is based on a graphical representation of differences in company performance and selected macroeconomic indicators. In our research, we used the GoogLeNet neural network architecture. The approach used allowed to display the financial situation of a company so that the generated CNN could identify active companies and companies at risk of bankruptcy with high accuracy. The procedure was applied to data of companies operating in the construction industry in the Czech Republic. The accuracy of the model was evaluated using receiver operating characteristic (ROC) curve and area under the curve (AUC). The use of CNN has yielded high forecast accuracy, demonstrating the ability to efficiently process graphical displays of financial data and capture differences between healthy and risky companies. The indicators identified in the constructed model can be used as input variables in an early warning system for financial distress.

Klíčová slova

Convolutional Neural Network, Bankruptcy, SMOTE, Financial Ratios, Macroeconomic Indicators, Construction

Klíčová slova v angličtině

Convolutional Neural Network, Bankruptcy, SMOTE, Financial Ratios, Macroeconomic Indicators, Construction

Autoři

REŽŇÁKOVÁ, M.; PĚTA, J.; ŠEBESTOVÁ, M.; DOSTÁL, P.

Rok RIV

2026

Vydáno

30.12.2025

Nakladatel

Kaunas University of Technology

Periodikum

Inzinerine Ekonomika-Engineering Economics

Svazek

36

Číslo

5

Stát

Litevská republika

Strany od

628

Strany do

642

Strany počet

15

URL

Plný text v Digitální knihovně

BibTex

@article{BUT200296,
  author="{} and Mária {Režňáková} and  {} and Jan {Pěta} and  {} and Monika {Šebestová} and  {} and Petr {Dostál}",
  title="SME Bankruptcy Prediction Using Convolutional Neural Networks",
  journal="Inzinerine Ekonomika-Engineering Economics",
  year="2025",
  volume="36",
  number="5",
  pages="628--642",
  doi="10.5755/j01.ee.36.5.36445",
  issn="1392-2785",
  url="https://inzeko.ktu.lt/index.php/EE/article/view/36445"
}