The high social costs associated with bankruptcy have spurred searches for better theoretical understanding and prediction capability. In this paper, we investigate a hybrid approach to bankruptcy prediction, using a genetic programming algorithm to construct a bankruptcy prediction model with variables from a rough sets model derived in prior research. Both studies used data from 291 US public companies for the period 1991 to 1997. The second stage genetic programming model developed in this research consists of a decision model that is 80% accurate on a validation sample as compared to the original rough sets model which was 67% accurate. Additionally, the genetic programming model reveals relationships between variables that are not appa...
This paper examined bankruptcy predictive accuracy of five statistics models--discriminant analysis ...
This paper proposes a genetic-based hybrid approach to predict the possibility of corporate failure....
Bankruptcy prediction problem has been intensively studied over the past decades. From traditional s...
The high social costs associated with bankruptcy have spurred searches for better theoretical unders...
Bankruptcy is a highly significant worldwide problem with high social costs. Traditional bankruptcy ...
Discriminant analysis and logit analysis are traditionally used to predict company bankruptcies. Mor...
Problem statement: Theoretical based data representation is an important tool for model selection an...
In this research the bankruptcy of companies has been surveyed through the genetic algorithm. To do ...
In this paper, Genetic Programming (GP) technique is applied to the empirical analysis of a new geom...
Summarization: The paper demonstrates the efficient use of hybrid intelligent systems for solving th...
The bankruptcy prediction research domain continues to evolve with many new different predictive mod...
AbstractIn this paper, we compare some traditional statistical methods for predicting financial dist...
Bankruptcy is an important topic for a number of people (shareholders, banks, investors, suppliers,....
© 2017 Elsevier Ltd The bankruptcy prediction research domain continues to evolve with many new diff...
This paper develops an adaptive, rule-based model for bankruptcy classification of firms subject to ...
This paper examined bankruptcy predictive accuracy of five statistics models--discriminant analysis ...
This paper proposes a genetic-based hybrid approach to predict the possibility of corporate failure....
Bankruptcy prediction problem has been intensively studied over the past decades. From traditional s...
The high social costs associated with bankruptcy have spurred searches for better theoretical unders...
Bankruptcy is a highly significant worldwide problem with high social costs. Traditional bankruptcy ...
Discriminant analysis and logit analysis are traditionally used to predict company bankruptcies. Mor...
Problem statement: Theoretical based data representation is an important tool for model selection an...
In this research the bankruptcy of companies has been surveyed through the genetic algorithm. To do ...
In this paper, Genetic Programming (GP) technique is applied to the empirical analysis of a new geom...
Summarization: The paper demonstrates the efficient use of hybrid intelligent systems for solving th...
The bankruptcy prediction research domain continues to evolve with many new different predictive mod...
AbstractIn this paper, we compare some traditional statistical methods for predicting financial dist...
Bankruptcy is an important topic for a number of people (shareholders, banks, investors, suppliers,....
© 2017 Elsevier Ltd The bankruptcy prediction research domain continues to evolve with many new diff...
This paper develops an adaptive, rule-based model for bankruptcy classification of firms subject to ...
This paper examined bankruptcy predictive accuracy of five statistics models--discriminant analysis ...
This paper proposes a genetic-based hybrid approach to predict the possibility of corporate failure....
Bankruptcy prediction problem has been intensively studied over the past decades. From traditional s...