In the business environment, Least-Squares estimation has long been the principle statistical method for forecasting a variable from available data with the logit regression model emerging as the principle methodology where the dependent variable is binary. Due to rapid hardware and software innovations, neural networks can now improve over the usual logit prediction model and provide a robust and less computationally demanding alternative to nonlinear regression methods. In this research, a back-propagation neural network methodology has been applied to a sample of bankrupt and non-bankrupt firms. Results indicate that this technique more accurately predicts bankruptcy than the logit model. The methodology represents a new paradigm in the ...
Using large amounts of data from small and medium-sized industrial firms, this study examines two as...
Survival analysis is one of the most advanced techniques in bankruptcy prediction. However, to date,...
Using large amounts of data from small and medium-sized industrial firms, this study examines two as...
Abstract Today, the intensity of industry competition has led many companies going bankrupt and pull...
Prediction of corporates bankruptcies is a topic that has gained more importance in the last two dec...
International audienceThe use of neural networks in finance began by the end of the 1980s and by the...
In this paper, we estimate coefficients of bankruptcy forecasting models, such as logistic and neura...
The purpose of this study is to explore the applicability of a form of the artificial neural network...
Financial distress is a condition where a company has difficulty paying off its financial obligation...
Bankruptcy prediction is an important classification problem for a business, and has become a major ...
Abstract Predicting corporate failure or bankruptcy is one of the most important prob-lems facing bu...
In today turbulent business climate, corporations have more exposure to bankruptcies than ever befor...
We find in the accounting literature the use of neural networks (NN) for the prediction of insolvenc...
[[abstract]]This paper presents a financial distress prediction model that combines the approaches o...
AbstractThis paper presents a financial distress prediction model that combines the approaches of ne...
Using large amounts of data from small and medium-sized industrial firms, this study examines two as...
Survival analysis is one of the most advanced techniques in bankruptcy prediction. However, to date,...
Using large amounts of data from small and medium-sized industrial firms, this study examines two as...
Abstract Today, the intensity of industry competition has led many companies going bankrupt and pull...
Prediction of corporates bankruptcies is a topic that has gained more importance in the last two dec...
International audienceThe use of neural networks in finance began by the end of the 1980s and by the...
In this paper, we estimate coefficients of bankruptcy forecasting models, such as logistic and neura...
The purpose of this study is to explore the applicability of a form of the artificial neural network...
Financial distress is a condition where a company has difficulty paying off its financial obligation...
Bankruptcy prediction is an important classification problem for a business, and has become a major ...
Abstract Predicting corporate failure or bankruptcy is one of the most important prob-lems facing bu...
In today turbulent business climate, corporations have more exposure to bankruptcies than ever befor...
We find in the accounting literature the use of neural networks (NN) for the prediction of insolvenc...
[[abstract]]This paper presents a financial distress prediction model that combines the approaches o...
AbstractThis paper presents a financial distress prediction model that combines the approaches of ne...
Using large amounts of data from small and medium-sized industrial firms, this study examines two as...
Survival analysis is one of the most advanced techniques in bankruptcy prediction. However, to date,...
Using large amounts of data from small and medium-sized industrial firms, this study examines two as...