First published online: 23 January 2020Financial data classification plays an important role in investment and banking industry with the purpose to control default risk, improve cash and select the best customers. Ensemble learning and classification systems are becoming gradually more applied to classify financial data where outputs from different classification systems are combined. The objective of this research is to assess the relative performance of existing state-of-the-art ensemble learning and classification systems with applications to corporate bankruptcy prediction and credit scoring. The considered ensemble systems include AdaBoost, LogitBoost, RUSBoost, subspace, and bagging ensemble system. The experimental results from three...
Many techniques have been proposed for credit risk assessment, from statistical models to artificial...
The prediction model is the main factor affecting the performance of a knowledge-based system for ba...
Proper credit-risk management is essential for lending institutions, as substantial losses can be in...
The ensemble consists of a single set of individually trained models, the predictions of which are c...
Credit risk and corporate bankruptcy prediction has widely been studied as a binary classification p...
In this paper, we investigate the performance of several systems based on ensemble of classifiers fo...
Bankruptcies can have serious implications for regulators, investors and the economy due to increasi...
This paper presents an ensemble neural network using a small data set in the context of bankruptcy p...
Bankruptcy prediction is of great utility for all economic stakeholders. Therefore, diverse methods ...
Credit scoring is very important process in banking industry during which each potential or current ...
[[abstract]]This study focuses on predicting whether a credit applicant can be categorized as good, ...
This study aims to show a substitute technique to corporate default prediction. Data mining techniqu...
[[abstract]]This study focuses on predicting whether a credit applicant can be categorized as good, ...
Credit scoring for loan applicants is an essential measure to reduce the risk of personal credit loa...
This study aims to show a substitute technique to corporate default prediction. Data mining techniqu...
Many techniques have been proposed for credit risk assessment, from statistical models to artificial...
The prediction model is the main factor affecting the performance of a knowledge-based system for ba...
Proper credit-risk management is essential for lending institutions, as substantial losses can be in...
The ensemble consists of a single set of individually trained models, the predictions of which are c...
Credit risk and corporate bankruptcy prediction has widely been studied as a binary classification p...
In this paper, we investigate the performance of several systems based on ensemble of classifiers fo...
Bankruptcies can have serious implications for regulators, investors and the economy due to increasi...
This paper presents an ensemble neural network using a small data set in the context of bankruptcy p...
Bankruptcy prediction is of great utility for all economic stakeholders. Therefore, diverse methods ...
Credit scoring is very important process in banking industry during which each potential or current ...
[[abstract]]This study focuses on predicting whether a credit applicant can be categorized as good, ...
This study aims to show a substitute technique to corporate default prediction. Data mining techniqu...
[[abstract]]This study focuses on predicting whether a credit applicant can be categorized as good, ...
Credit scoring for loan applicants is an essential measure to reduce the risk of personal credit loa...
This study aims to show a substitute technique to corporate default prediction. Data mining techniqu...
Many techniques have been proposed for credit risk assessment, from statistical models to artificial...
The prediction model is the main factor affecting the performance of a knowledge-based system for ba...
Proper credit-risk management is essential for lending institutions, as substantial losses can be in...