In the face of rising defaults and limited studies on the prediction of financial distress in Morocco, this article aims to determine the most relevant predictors of financial distress and identify its optimal prediction models in a normal Moroccan economic context over two years. To achieve these objectives, logistic regression and neural networks are used based on financial ratios selected by lasso and stepwise techniques. Our empirical results highlight the significant role of predictors, namely interest to sales and return on assets in predicting financial distress. The results show that logistic regression models obtained by stepwise selection outperform the other models with an overall accuracy of 93.33% two years before financial dis...
In view of the failure of many high profile firms, bankruptcy prediction has become a topic of high ...
Financial distress can be a highly costly and disruptive event, both on the level of the firm as wel...
Analyzes the use of linear and neural network models for financial distress classification, with emp...
In the face of rising defaults and limited studies on the prediction of financial distress in Morocc...
International audienceFinancial distress prediction is a central issue in empirical finance that has...
The ability to predict financial failure forms an essential topic in financial research. The various...
Financial distress prediction is a key challenge every financing provider faces when determining bor...
The prediction of financial distress has emerged as a significant concern over a prolonged period sp...
In the face of the global economic crisis and the resulting uncertainty, it is crucial for investors...
Abstract Today, the intensity of industry competition has led many companies going bankrupt and pull...
One of the most important topics discussed in the area of financial management is investors’ ability...
As a prerequisite for an informed decision, a company’s financial results are undoubtedly one of the...
Companies that face financial distress are always regarded as the root cause of enormous financial a...
Neural networks are designed to detect complex relationships among variables better than traditional...
Financial distress and bankruptcies are highly costly and devastating processes for all parts of the...
In view of the failure of many high profile firms, bankruptcy prediction has become a topic of high ...
Financial distress can be a highly costly and disruptive event, both on the level of the firm as wel...
Analyzes the use of linear and neural network models for financial distress classification, with emp...
In the face of rising defaults and limited studies on the prediction of financial distress in Morocc...
International audienceFinancial distress prediction is a central issue in empirical finance that has...
The ability to predict financial failure forms an essential topic in financial research. The various...
Financial distress prediction is a key challenge every financing provider faces when determining bor...
The prediction of financial distress has emerged as a significant concern over a prolonged period sp...
In the face of the global economic crisis and the resulting uncertainty, it is crucial for investors...
Abstract Today, the intensity of industry competition has led many companies going bankrupt and pull...
One of the most important topics discussed in the area of financial management is investors’ ability...
As a prerequisite for an informed decision, a company’s financial results are undoubtedly one of the...
Companies that face financial distress are always regarded as the root cause of enormous financial a...
Neural networks are designed to detect complex relationships among variables better than traditional...
Financial distress and bankruptcies are highly costly and devastating processes for all parts of the...
In view of the failure of many high profile firms, bankruptcy prediction has become a topic of high ...
Financial distress can be a highly costly and disruptive event, both on the level of the firm as wel...
Analyzes the use of linear and neural network models for financial distress classification, with emp...