In this paper, we compare the performance of two non-parametric methods of classification, Regression Trees (CART) and the newly Multivariate Adaptive Regression Splines (MARS) models, in forecasting bankruptcy. Models are implemented on a large universe of US banks over a complete market cycle and running under a K-Fold Cross validation. A hybrid model which combines K-means clustering and MARS is tested as well. Our findings highlight that i) Either in training or testing sample, MARS provides, in average, better correct classification rate than CART model, ii) Hybrid approach significantly enhances the classification accuracy rate for both the training and the testing samples, iii) MARS prediction underperforms when the misclassification...
Predicting corporate bankruptcy is one of the fundamental tasks in credit risk assessment. In partic...
Models for Predicting Business Bankruptcies and Their Application to Banking and Financial Regulatio
Recent literature strongly suggests that machine learning approaches to classification outperform "c...
International audienceIn this paper, we compare the performance of two non-parametric methods of cla...
URL des Documents de travail : http://ces.univ-paris1.fr/cesdp/cesdp2016.htmlDocuments de travail du...
International audienceIn this paper, we use random subspace method to compare the classification and...
URL des Documents de travail : http://ces.univ-paris1.fr/cesdp/cesdp2016.htmlDocuments de travail du...
Corporate bankruptcy prediction has attracted significant research attention from business academics...
An intensive research from academics and practitioners has been provided regarding models for bankru...
In business analytics and the financial world, bankruptcy prediction has been ...
Bankruptcy prediction has been a topic of active research for business and corporate institutions in...
Bankruptcy prediction problem has been intensively studied over the past decades. From traditional s...
Prediction of corporates bankruptcies is a topic that has gained more importance in the last two dec...
The main objective of a financial distress prediction model is to generate early warning signals.In ...
Article focuses on the prediction of bankruptcy of the 1,000 medium-sized retail business companies ...
Predicting corporate bankruptcy is one of the fundamental tasks in credit risk assessment. In partic...
Models for Predicting Business Bankruptcies and Their Application to Banking and Financial Regulatio
Recent literature strongly suggests that machine learning approaches to classification outperform "c...
International audienceIn this paper, we compare the performance of two non-parametric methods of cla...
URL des Documents de travail : http://ces.univ-paris1.fr/cesdp/cesdp2016.htmlDocuments de travail du...
International audienceIn this paper, we use random subspace method to compare the classification and...
URL des Documents de travail : http://ces.univ-paris1.fr/cesdp/cesdp2016.htmlDocuments de travail du...
Corporate bankruptcy prediction has attracted significant research attention from business academics...
An intensive research from academics and practitioners has been provided regarding models for bankru...
In business analytics and the financial world, bankruptcy prediction has been ...
Bankruptcy prediction has been a topic of active research for business and corporate institutions in...
Bankruptcy prediction problem has been intensively studied over the past decades. From traditional s...
Prediction of corporates bankruptcies is a topic that has gained more importance in the last two dec...
The main objective of a financial distress prediction model is to generate early warning signals.In ...
Article focuses on the prediction of bankruptcy of the 1,000 medium-sized retail business companies ...
Predicting corporate bankruptcy is one of the fundamental tasks in credit risk assessment. In partic...
Models for Predicting Business Bankruptcies and Their Application to Banking and Financial Regulatio
Recent literature strongly suggests that machine learning approaches to classification outperform "c...