Application of Genetic Algorithm in Development of Bankruptcy Predication Theory Case Study: Companies Listed on Tehran Stock Exchange
الموضوعات :Mohsen Hajiamiri 1 , Mohammad Reza Shahraki 2 , Seyyed Masoud Barakati 3
1 - Department of Industrial Engineering,
Zahedan Branch, Islamic Azad University,
Zahedan, Iran
2 - Department of Industrial Engineering,
University of Sistan and Baluchistan,
Zahedan, Iran
3 - University of Sistan and Baluchistan,
Zahedan, Iran
الکلمات المفتاحية: Genetic Algorithm, Bankruptcy Prediction, Neural Networks, Logistic regression, bankruptcy, Multiple Discriminant Analysis,
ملخص المقالة :
The bankruptcy prediction models have long been proposedas a key subject in finance. The present study, therefore, makes aneffort to examine the corporate bankruptcy prediction through employmentof the genetic algorithm model. Furthermore, it attempts to evaluatethe strategies to overcome the drawbacks of ordinary methods forbankruptcy prediction through application of genetic algorithms. Thesample under investigation in this research includes 70 pairs of bankruptand non-bankrupt companies during 2001-2011. Having examined theobtained data from financial statements of the companies under study,5 financial independent variables were identified so as to be used in themodel. The results indicated that employment of genetic algorithm in predicting financial bankruptcy is highly effective, to the extent it managedto correctly predict the financial bankruptcy of companies twoyears before the base year, one year before the base year and the baseyear at accuracies of 96.44, 97.94 and 95.53, respectively.
[1] Kurdestani, A. M. (1996-97), “Profitability used for predicting the cash
flow and future profits”, Journal of Accounting and Auditing Reviews 18
& 19, P42-55.
[2] Alfaro, E. and Sharman, k. (2007), “A Genetic Programming Approach for
Bankruptcy Prediction Using a Highly Unbalanced Database”. European
Journal of Evolutionary Computing, 93, 132-143.
[3] Altman, E. (2000), “Predicting Financial Distress of Companies”. Retrieved
on September 4th, working paper.
[4] Beaver, W. (1996), “Financial Ratios as Predictors of Failure”. Journal of
Accounting Research, 666-16.
[5] Dimitras, A., Zanakis, S., and Zopudinis, C. (1996), “A survey of business
failures with an emphasis on failure prediction methods and industrial
applications”. European Journal of Operational Research, 90 (3), 487-
513.
[6] Jahangir, M. (2000), “Commercial Code with Cheques act. The amended
registration regulation of non-commercial organizations”, Tehran, Didar
Publications.
[7] Khashman, A. (2010), “Neural networks for credit risk evaluation: Investigation
of different neural models and learning schemes”. Expert Systems
with Applications, (37), 6233-6239.
[8] Lee, K. C., Han, I., and Kwon, Y. (1996),“Hybrid neural network models
for bankruptcy predictions, Decision Support Systems”, (18), 63-72.
[9] Lensberg, T., Eilifsen, A., and McKee, T. E. (2006), “Bankruptcy theory
development and classification via genetic program”. European Journal of
operational research, 169, 677-697.
[10] Martin, D. (1977), “Early warning of bank failures: A logit regression
approach”. Journal of Banking and Finance, 1, 249-276.
[11] Mehrani S., Bahramfar, N., and Ghayur, F. (2005), “A Study on the
Correlation between the Traditional Liquidity Ratios and Ratios of Cash
Flow Statement for Assessing the Continuity of Corporate Activities”,
Journal of Accounting and Auditing Reviews, 40, 3-17.
[12] Min, S. H., Lee, J., and Han, I. (2006), “Hybrid genetic algorithms and
support vector machines for bankruptcy prediction”. Expert systems with
applications, 31: 652-660.
[13] Odom, M. D. and Sharda, R. (1990), “A Neural Network Model for
Bankruptcy Prediction”. IJCNN International Joint Conference on Neural
Networks. San Diego: CA, 2: 163-168.
[14] Reese, W. (1995), “Financial Analysis (second ed.)”. London: Prentice
Hall.
[15] Shah, J. and Murtaza, M. (2000), “A neural network based clustering
procedure for bankruptcy prediction”. American Business Review, 18 (2),
80-86.
[16] Varetto, F. (1998), “Genetic Algorithms application in the analysis of
insolvency risk”.
[17] Wallace Wanda, A. (2004), “Risk assessment by internal auditors using
past research on bankruptcy applying bankruptcy models”.