The interest in the prediction of corporate bankruptcy is increasing due to the implications associated with this phenomenon (e.g. economic, and social) for investors, creditors, competitors, government, although this is a classical problem in the financial literature. Two kinds of models are generally adopted for bankruptcy prediction: (i) accounting ratios based models and (ii) market based models. In the former, classical statistical techniques such as discriminant analysis or logistic regression models have been used, while in the latter the Moody’s KMV model was adopted. This paper follows the first approach (i), and it is based on the analysis of the evolution of several financial indicators during a three-year period. A framework was...
This paper attempts to evaluate the predictive ability of four machine learning models: logit, decis...
Corporate failure or bankruptcy is costly to investors as well as to society in general. Given the h...
Investors are always looking for information about their investment choices to have a favorable inve...
The interest in the prediction of corporate bankruptcy is increasing due to the implications associa...
This study examines the use of data mining techniques namely decision tree, neural networks and logi...
Estimating the risk of corporate bankruptcies is of large importance to creditors and in- vestors. F...
This paper deals with the prediction of company bankruptcies and defines how this undesirable state ...
Corporate bankruptcy prediction has attracted significant research attention from business academics...
Abstract: Characterization of individual behaviours by the process of data mining has been key tool ...
An intensive research from academics and practitioners has been provided regarding models for bankru...
Financial distress is a condition where a company has difficulty paying off its financial obligation...
In this thesis, we create a new multi-year model for predicting bankruptcies in the Norwegian marke...
Managing credit risk might be the single most important business area for any commercial bank. The a...
This study involves the development of neural network prediction model to predict the stage of bankr...
Predicting corporate bankruptcy is one of the fundamental tasks in credit risk assessment. In partic...
This paper attempts to evaluate the predictive ability of four machine learning models: logit, decis...
Corporate failure or bankruptcy is costly to investors as well as to society in general. Given the h...
Investors are always looking for information about their investment choices to have a favorable inve...
The interest in the prediction of corporate bankruptcy is increasing due to the implications associa...
This study examines the use of data mining techniques namely decision tree, neural networks and logi...
Estimating the risk of corporate bankruptcies is of large importance to creditors and in- vestors. F...
This paper deals with the prediction of company bankruptcies and defines how this undesirable state ...
Corporate bankruptcy prediction has attracted significant research attention from business academics...
Abstract: Characterization of individual behaviours by the process of data mining has been key tool ...
An intensive research from academics and practitioners has been provided regarding models for bankru...
Financial distress is a condition where a company has difficulty paying off its financial obligation...
In this thesis, we create a new multi-year model for predicting bankruptcies in the Norwegian marke...
Managing credit risk might be the single most important business area for any commercial bank. The a...
This study involves the development of neural network prediction model to predict the stage of bankr...
Predicting corporate bankruptcy is one of the fundamental tasks in credit risk assessment. In partic...
This paper attempts to evaluate the predictive ability of four machine learning models: logit, decis...
Corporate failure or bankruptcy is costly to investors as well as to society in general. Given the h...
Investors are always looking for information about their investment choices to have a favorable inve...