In this paper, we investigate the performance of several systems based on ensemble of classifiers for bankruptcy prediction and credit scoring. The obtained results are very encouraging, our results improved the performance obtained using the stand-alone classifiers. We show that the method "Random Subspace" outperforms the other ensemble methods tested in this paper. Moreover, the best stand-alone method is the multi-layer perceptron neural net, while the best method tested in this work is the Random Subspace of Levenberg-Marquardt neural net. In this work three financial datasets are chosen for the experiments: Australian credit; German credit; Japanese credit
The prediction model is the main factor affecting the performance of a knowledge-based system for ba...
The most basic task in credit scoring is to classify potential borrowers as "good" or "bad" based on...
Part 2: Learning-Ensemble LearningInternational audienceThis paper examines the classification perfo...
In this paper, we investigate the performance of several systems based on ensemble of classifiers fo...
This paper presents an ensemble neural network using a small data set in the context of bankruptcy p...
In this study, we examine the predictive performance of a wide class of binary classifiers using a l...
The ensemble consists of a single set of individually trained models, the predictions of which are c...
learning algorithm is used for correcting the outputs of Multilayer Perceptrons (MLP) for predicting...
Many techniques have been proposed for credit risk assessment, from statistical models to artificial...
Credit risk and corporate bankruptcy prediction has widely been studied as a binary classification p...
[[abstract]]This study focuses on predicting whether a credit applicant can be categorized as good, ...
Credit scoring is very important process in banking industry during which each potential or current ...
First published online: 23 January 2020Financial data classification plays an important role in inve...
[[abstract]]This study focuses on predicting whether a credit applicant can be categorized as good, ...
Bankruptcy prediction is of great utility for all economic stakeholders. Therefore, diverse methods ...
The prediction model is the main factor affecting the performance of a knowledge-based system for ba...
The most basic task in credit scoring is to classify potential borrowers as "good" or "bad" based on...
Part 2: Learning-Ensemble LearningInternational audienceThis paper examines the classification perfo...
In this paper, we investigate the performance of several systems based on ensemble of classifiers fo...
This paper presents an ensemble neural network using a small data set in the context of bankruptcy p...
In this study, we examine the predictive performance of a wide class of binary classifiers using a l...
The ensemble consists of a single set of individually trained models, the predictions of which are c...
learning algorithm is used for correcting the outputs of Multilayer Perceptrons (MLP) for predicting...
Many techniques have been proposed for credit risk assessment, from statistical models to artificial...
Credit risk and corporate bankruptcy prediction has widely been studied as a binary classification p...
[[abstract]]This study focuses on predicting whether a credit applicant can be categorized as good, ...
Credit scoring is very important process in banking industry during which each potential or current ...
First published online: 23 January 2020Financial data classification plays an important role in inve...
[[abstract]]This study focuses on predicting whether a credit applicant can be categorized as good, ...
Bankruptcy prediction is of great utility for all economic stakeholders. Therefore, diverse methods ...
The prediction model is the main factor affecting the performance of a knowledge-based system for ba...
The most basic task in credit scoring is to classify potential borrowers as "good" or "bad" based on...
Part 2: Learning-Ensemble LearningInternational audienceThis paper examines the classification perfo...