On the predictability of risk box approach by genetic programming method for bankruptcy prediction

Problem statement: Theoretical based data representation is an important tool for model selection and interpretations in bankruptcy analysis since the numerical representation are much less transparent. Some methodological problems concerning financial ratios such as non-proportionality, non-asymetr...

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Main Authors: Bahiraie, Alireza, Ibrahim, Noor Akma, Abdul Karim, Mohd Azhar
Format: Article
Language:English
Published: Science Publications 2009
Online Access:http://psasir.upm.edu.my/id/eprint/15925/1/ajassp.2009.1748.1757.pdf
http://psasir.upm.edu.my/id/eprint/15925/
http://thescipub.com/html/10.3844/ajassp.2009.1748.1757
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spelling my.upm.eprints.159252017-11-23T08:07:08Z http://psasir.upm.edu.my/id/eprint/15925/ On the predictability of risk box approach by genetic programming method for bankruptcy prediction Bahiraie, Alireza Ibrahim, Noor Akma Abdul Karim, Mohd Azhar Problem statement: Theoretical based data representation is an important tool for model selection and interpretations in bankruptcy analysis since the numerical representation are much less transparent. Some methodological problems concerning financial ratios such as non-proportionality, non-asymetricity, non-scalicity are solved in this study and we presented a complementary technique for empirical analysis of financial ratios and bankruptcy risk. Approach: This study presented new geometric technique for empirical analysis of bankruptcy risk using financial ratios. Within this framework, we proposed the use of a new ratio representation which named Risk Box measure (RB). We demonstrated the application of this geometric approach for variable representation, data visualization and financial ratios at different stages of corporate bankruptcy prediction models based on financial balance sheet ratios. These stages were the selection of variables (predictors), accuracy of each estimation model and the representation of each model for transformed and common ratios. Results: We provided evidence of extent to which changes in values of this index were associated with changes in each axis values and how this may alter our economic interpretation of changes in the patterns and direction of risk components. Results of Genetic Programming (GP) models were compared as different classification models and results showed the classifiers outperform by modified ratios. Conclusion/Recommendations: In this study, a new dimension to risk measurement and data representation with the advent of the Share Risk method (SR) was proposed. Genetic programming method is substantially superior to the traditional methods such as MDA or Logistic method. It was strongly suggested the use of SR methodology for ratio analysis, which provided a conceptual and complimentary methodological solution to many problems associated with the use of ratios. Respectively, GP will provide heuristic non linear regression as a tool in providing forecasting regression for studies associated with financial data. Genetic programming as one of the modern classification method out performs by the use of modified ratios. Our new method would be a general methodological guideline associated with financial data analysis. Science Publications 2009 Article PeerReviewed application/pdf en http://psasir.upm.edu.my/id/eprint/15925/1/ajassp.2009.1748.1757.pdf Bahiraie, Alireza and Ibrahim, Noor Akma and Abdul Karim, Mohd Azhar (2009) On the predictability of risk box approach by genetic programming method for bankruptcy prediction. American Journal of Applied Sciences, 6 (9). pp. 1748-1757. ISSN 1546-9239; ESSN: 1554-3641 http://thescipub.com/html/10.3844/ajassp.2009.1748.1757 10.3844/ajassp.2009.1748.1757
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
language English
description Problem statement: Theoretical based data representation is an important tool for model selection and interpretations in bankruptcy analysis since the numerical representation are much less transparent. Some methodological problems concerning financial ratios such as non-proportionality, non-asymetricity, non-scalicity are solved in this study and we presented a complementary technique for empirical analysis of financial ratios and bankruptcy risk. Approach: This study presented new geometric technique for empirical analysis of bankruptcy risk using financial ratios. Within this framework, we proposed the use of a new ratio representation which named Risk Box measure (RB). We demonstrated the application of this geometric approach for variable representation, data visualization and financial ratios at different stages of corporate bankruptcy prediction models based on financial balance sheet ratios. These stages were the selection of variables (predictors), accuracy of each estimation model and the representation of each model for transformed and common ratios. Results: We provided evidence of extent to which changes in values of this index were associated with changes in each axis values and how this may alter our economic interpretation of changes in the patterns and direction of risk components. Results of Genetic Programming (GP) models were compared as different classification models and results showed the classifiers outperform by modified ratios. Conclusion/Recommendations: In this study, a new dimension to risk measurement and data representation with the advent of the Share Risk method (SR) was proposed. Genetic programming method is substantially superior to the traditional methods such as MDA or Logistic method. It was strongly suggested the use of SR methodology for ratio analysis, which provided a conceptual and complimentary methodological solution to many problems associated with the use of ratios. Respectively, GP will provide heuristic non linear regression as a tool in providing forecasting regression for studies associated with financial data. Genetic programming as one of the modern classification method out performs by the use of modified ratios. Our new method would be a general methodological guideline associated with financial data analysis.
format Article
author Bahiraie, Alireza
Ibrahim, Noor Akma
Abdul Karim, Mohd Azhar
spellingShingle Bahiraie, Alireza
Ibrahim, Noor Akma
Abdul Karim, Mohd Azhar
On the predictability of risk box approach by genetic programming method for bankruptcy prediction
author_facet Bahiraie, Alireza
Ibrahim, Noor Akma
Abdul Karim, Mohd Azhar
author_sort Bahiraie, Alireza
title On the predictability of risk box approach by genetic programming method for bankruptcy prediction
title_short On the predictability of risk box approach by genetic programming method for bankruptcy prediction
title_full On the predictability of risk box approach by genetic programming method for bankruptcy prediction
title_fullStr On the predictability of risk box approach by genetic programming method for bankruptcy prediction
title_full_unstemmed On the predictability of risk box approach by genetic programming method for bankruptcy prediction
title_sort on the predictability of risk box approach by genetic programming method for bankruptcy prediction
publisher Science Publications
publishDate 2009
url http://psasir.upm.edu.my/id/eprint/15925/1/ajassp.2009.1748.1757.pdf
http://psasir.upm.edu.my/id/eprint/15925/
http://thescipub.com/html/10.3844/ajassp.2009.1748.1757
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score 13.154949