Research Article

PREDICTING FINANCIAL DISTRESS USING SUPERVISED MACHINE LEARNING ALGORITHMS: AN APPLICATION ON BORSA ISTANBUL

Volume: 10 Number: 4 December 31, 2023
EN

PREDICTING FINANCIAL DISTRESS USING SUPERVISED MACHINE LEARNING ALGORITHMS: AN APPLICATION ON BORSA ISTANBUL

Abstract

Purpose- The main purpose of this study is to identify the most significant variables to detect financial distress earlier and to find the best machine learning algorithm model. Methodology-This study has used Support Vector Machine, Logistic Regression, Random Forest and K-nearest neighbors method techniques to predict the financial distress prediction for the companies of Turkey between 2012 and 2021. Findings- As a result of the study, it has been determined that Random Forest provides the best results in terms of precision, accuracy, and recall. Further, this study has found the most important five independent variables to determine the financial distress status of the firms. In this way, it has been found that Current Assets/ Current Liabilities, Working Capital / Total Assets, Gross profit / Revenue, Retained Earnings / Total Assets and Sales growth rate are the most useful variables to determine financial distress status of Turkish firms earlier. Conclusion- This study has concluded that cash ratios and profitability ratios and sales growth are the most important independent variables to determine financial distress one-year ahead. Furthermore, it has been found that random forest is the best machine learning method among other supervised machine learning methods used in this study.

Keywords

References

  1. Aker, Y., & Karavardar, A. (2023). Using machine learning methods in financial distress prediction: sample of small and medium sized enterprises operating in Turkey. Ege Akademik Bakis, 23(2), 145-162
  2. Aksoy, B., & Boztosun, D. (2018). Financial failure prediction by using discriminant and logistics regression methods: evidence from BIST manufacturing sector. Finans Politik & Ekonomik Yorumlar, 646, 9–32.
  3. Zhang, L., Altman, E. I. & Yen, J. (2010). Corporate financial distress diagnosis model and application in credit rating for listing firms in China. Frontiers of Computer Science in China, 4, 220-236.
  4. Altman Edward I. (1968). Financial ratios, discriminant analysis and the prediction of corporate bankruptcy. Journal of Finance, 23(4), 189–209.
  5. Oude Avenhuis, J. (2013). Testing the generalizability of the bankruptcy prediction models of Altman, Ohlson and Zmijewski for Dutch listed and large non-listed firms (Master's thesis, University of Twente).
  6. Beaver, W. H. (1966). Financial ratios as predictors of failure. Journal of Accounting Research, 71-111.
  7. Breiman, L. (2001). Random forests. Machine Learning, 45, 5-32.
  8. Cortes, C., & Vapnik, V. (1995). Support-vector networks. Machine Learning, 20, 273-297.

Details

Primary Language

English

Subjects

Finance, Business Administration

Journal Section

Research Article

Publication Date

December 31, 2023

Submission Date

October 29, 2023

Acceptance Date

December 21, 2023

Published in Issue

Year 2023 Volume: 10 Number: 4

APA
Selimefendigil, S. (2023). PREDICTING FINANCIAL DISTRESS USING SUPERVISED MACHINE LEARNING ALGORITHMS: AN APPLICATION ON BORSA ISTANBUL. Journal of Economics Finance and Accounting, 10(4), 217-223. https://izlik.org/JA32XY59UC
AMA
1.Selimefendigil S. PREDICTING FINANCIAL DISTRESS USING SUPERVISED MACHINE LEARNING ALGORITHMS: AN APPLICATION ON BORSA ISTANBUL. JEFA. 2023;10(4):217-223. https://izlik.org/JA32XY59UC
Chicago
Selimefendigil, Seyfullah. 2023. “PREDICTING FINANCIAL DISTRESS USING SUPERVISED MACHINE LEARNING ALGORITHMS: AN APPLICATION ON BORSA ISTANBUL”. Journal of Economics Finance and Accounting 10 (4): 217-23. https://izlik.org/JA32XY59UC.
EndNote
Selimefendigil S (December 1, 2023) PREDICTING FINANCIAL DISTRESS USING SUPERVISED MACHINE LEARNING ALGORITHMS: AN APPLICATION ON BORSA ISTANBUL. Journal of Economics Finance and Accounting 10 4 217–223.
IEEE
[1]S. Selimefendigil, “PREDICTING FINANCIAL DISTRESS USING SUPERVISED MACHINE LEARNING ALGORITHMS: AN APPLICATION ON BORSA ISTANBUL”, JEFA, vol. 10, no. 4, pp. 217–223, Dec. 2023, [Online]. Available: https://izlik.org/JA32XY59UC
ISNAD
Selimefendigil, Seyfullah. “PREDICTING FINANCIAL DISTRESS USING SUPERVISED MACHINE LEARNING ALGORITHMS: AN APPLICATION ON BORSA ISTANBUL”. Journal of Economics Finance and Accounting 10/4 (December 1, 2023): 217-223. https://izlik.org/JA32XY59UC.
JAMA
1.Selimefendigil S. PREDICTING FINANCIAL DISTRESS USING SUPERVISED MACHINE LEARNING ALGORITHMS: AN APPLICATION ON BORSA ISTANBUL. JEFA. 2023;10:217–223.
MLA
Selimefendigil, Seyfullah. “PREDICTING FINANCIAL DISTRESS USING SUPERVISED MACHINE LEARNING ALGORITHMS: AN APPLICATION ON BORSA ISTANBUL”. Journal of Economics Finance and Accounting, vol. 10, no. 4, Dec. 2023, pp. 217-23, https://izlik.org/JA32XY59UC.
Vancouver
1.Seyfullah Selimefendigil. PREDICTING FINANCIAL DISTRESS USING SUPERVISED MACHINE LEARNING ALGORITHMS: AN APPLICATION ON BORSA ISTANBUL. JEFA [Internet]. 2023 Dec. 1;10(4):217-23. Available from: https://izlik.org/JA32XY59UC

Journal of Economics, Finance and Accounting (JEFA) is a scientific, academic, double blind peer-reviewed, semiannual and open-access online journal. The journal publishes 2 issues a year. The issuing months are June and December. The publication language of the Journal is English. JEFA aims to provide a research source for all practitioners, policy makers, professionals and researchers working in the area of economics, finance, accounting and auditing. The editor in chief of JEFA invites all manuscripts that cover theoretical and/or applied researches on topics related to the interest areas of the Journal. JEFA publishes academic research studies only. JEFA charges no submission or publication fee.

Ethics Policy - JEFA applies the standards of Committee on Publication Ethics (COPE). JEFA is committed to the academic community ensuring ethics and quality of manuscripts in publications. Plagiarism is strictly forbidden and the manuscripts found to be plagiarized will not be accepted or if published will be removed from the publication. Authors must certify that their manuscripts are their original work. Plagiarism, duplicate, data fabrication and redundant publications are forbidden. The manuscripts are subject to plagiarism check by iThenticate or similar. All manuscript submissions must provide a similarity report (up to 15% excluding quotes, bibliography, abstract).

Open Access - All research articles published in PressAcademia Journals are fully open access; immediately freely available to read, download and share. Articles are published under the terms of a Creative Commons license which permits use, distribution and reproduction in any medium, provided the original work is properly cited. Open access is a property of individual works, not necessarily journals or publishers. Community standards, rather than copyright law, will continue to provide the mechanism for enforcement of proper attribution and responsible use of the published work, as they do now.