The credit scoring has been regarded as a critical topic and its related departments make efforts to collect huge amount of data to avoid wrong decision. An effective classificatory model will objectively help managers instead of intuitive experience. This study proposes five approaches combining with the backpropagation neural network (BPN) classifier for features selection that retains sufficient information for classification purpose. Different credit scoring models are constructed by selecting attributes with five approaches. Two UCI (University of California, Irvine) data sets are chosen to evaluate the accuracy of various hybrid-BPN models. BPN classifier combines with conventional statistical LDA, Decision tree, Rough sets theory, F-...
In this paper, we present an approach for sample selection using an ensemble of neural networks for ...
[[abstract]]Unrepresentative data samples are likely to reduce the utility of data classifiers in pr...
[[abstract]]This study focuses on predicting whether a credit applicant can be categorized as good, ...
[[abstract]]Credit scoring has become a very important task as the credit industry has been experien...
Credit Decisions are extremely vital for any type of financial institution because it can stimulate ...
Reliable credit scoring models played a very important role of retail banks to evaluate credit appli...
Credit granting is a fundamental question and one of the most complex tasks that every credit instit...
The research paper deals with credit scoring in banking system which compares most commonly statisti...
In this paper we consider a credit scoring problem. We compare three powerful credit scoring models:...
In this paper, we study the performance of various state-of-the-art classification algorithms applie...
Developing accurate analytical credit scoring models has become a major focus for financial institut...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
In our master thesis, we compare ten classification algorithms for credit scor- ing. Their predictio...
One of the core functions of a financial institution is the credit risk management and one of the mo...
In financial risk, credit risk management is one of the most important issues in financial decision-...
In this paper, we present an approach for sample selection using an ensemble of neural networks for ...
[[abstract]]Unrepresentative data samples are likely to reduce the utility of data classifiers in pr...
[[abstract]]This study focuses on predicting whether a credit applicant can be categorized as good, ...
[[abstract]]Credit scoring has become a very important task as the credit industry has been experien...
Credit Decisions are extremely vital for any type of financial institution because it can stimulate ...
Reliable credit scoring models played a very important role of retail banks to evaluate credit appli...
Credit granting is a fundamental question and one of the most complex tasks that every credit instit...
The research paper deals with credit scoring in banking system which compares most commonly statisti...
In this paper we consider a credit scoring problem. We compare three powerful credit scoring models:...
In this paper, we study the performance of various state-of-the-art classification algorithms applie...
Developing accurate analytical credit scoring models has become a major focus for financial institut...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
In our master thesis, we compare ten classification algorithms for credit scor- ing. Their predictio...
One of the core functions of a financial institution is the credit risk management and one of the mo...
In financial risk, credit risk management is one of the most important issues in financial decision-...
In this paper, we present an approach for sample selection using an ensemble of neural networks for ...
[[abstract]]Unrepresentative data samples are likely to reduce the utility of data classifiers in pr...
[[abstract]]This study focuses on predicting whether a credit applicant can be categorized as good, ...