This study examines the potential of a neural network (NN) model, whose inputs and structure are automatically selected by means of a genetic algorithm (GA), for the prediction of corporate failure using information drawn from financial statements. The results of this model are compared with those of a linear discriminant analysis (LDA) model. Data from a matched sample of 178 publicly quoted, failed and non-failed, US firms, drawn from the period 1991 to 2000 is used to train and test the models. The best evolved neural network correctly classified 86.7 (76.6)% of the firms in the training set, one (three) year(s) prior to failure, and 80.7 (66.0)% in the out-of-sample validation set. The LDA model correctly categorised 81.7 (75.0)% and 76...
AbstractDue to the uncertainty of the current business environment and global competition, not only ...
Discriminant analysis and logit analysis are traditionally used to predict company bankruptcies. Mor...
Business failure prediction is a topic of great importance for a lot of people (shareholders, banks,...
This paper proposes a genetic-based hybrid approach to predict the possibility of corporate failure....
Corporate failure is one of the most popular prediction problems because early identification of at-...
This study investigated whether two artificial neural networks (ANNs), multilayer perceptron (MLP) a...
Abstract Predicting corporate failure or bankruptcy is one of the most important prob-lems facing bu...
This article looks at the ability of a relatively new technique, hybrid artificial neural networks (...
This paper presents novel neural network-genetic programming hybrids to predict the failure of dotco...
A growing number of predicting corporate failure models has emerged since 60s. Economic and social c...
A growing number of predicting corporate failure models has emerged since 60s. Economic and social c...
This paper looks at the ability of a relatively new technique, hybrid ANN's, to predict corpora...
AbstractDetermining the firm risk failure using financial statements has been one of the most intere...
This paper looks at the ability of a relatively new technique, a non-linear extension of the Granger...
A comparison of corporate failure models in Australia: Hybrid neural networks, logit models and disc...
AbstractDue to the uncertainty of the current business environment and global competition, not only ...
Discriminant analysis and logit analysis are traditionally used to predict company bankruptcies. Mor...
Business failure prediction is a topic of great importance for a lot of people (shareholders, banks,...
This paper proposes a genetic-based hybrid approach to predict the possibility of corporate failure....
Corporate failure is one of the most popular prediction problems because early identification of at-...
This study investigated whether two artificial neural networks (ANNs), multilayer perceptron (MLP) a...
Abstract Predicting corporate failure or bankruptcy is one of the most important prob-lems facing bu...
This article looks at the ability of a relatively new technique, hybrid artificial neural networks (...
This paper presents novel neural network-genetic programming hybrids to predict the failure of dotco...
A growing number of predicting corporate failure models has emerged since 60s. Economic and social c...
A growing number of predicting corporate failure models has emerged since 60s. Economic and social c...
This paper looks at the ability of a relatively new technique, hybrid ANN's, to predict corpora...
AbstractDetermining the firm risk failure using financial statements has been one of the most intere...
This paper looks at the ability of a relatively new technique, a non-linear extension of the Granger...
A comparison of corporate failure models in Australia: Hybrid neural networks, logit models and disc...
AbstractDue to the uncertainty of the current business environment and global competition, not only ...
Discriminant analysis and logit analysis are traditionally used to predict company bankruptcies. Mor...
Business failure prediction is a topic of great importance for a lot of people (shareholders, banks,...