In credit scoring, feature selection aims at removing irrelevant data to improve the performance of the scorecard and its interpretability. Standard techniques treat feature selection as a single-objective task and rely on statistical criteria such as correlation. Recent studies suggest that using profit-based indicators may improve the quality of scoring models for businesses. We extend the use of profit measures to feature selection and develop a multi-objective wrapper framework based on the NSGA-II genetic algorithm with two fitness functions: the Expected Maximum Profit (EMP) and the number of features. Experiments on multiple credit scoring data sets demonstrate that the proposed approach develops scorecards that can yield a higher ex...
In financial risk, credit risk management is one of the most important issues in financial decision-...
This thesis presents a new scoring method for credit card applications. The method balances the risk...
n this paper, we propose a profit-driven approach for classifier construction and simultaneous varia...
© 2019 In credit scoring, feature selection aims at removing irrelevant data to improve the performa...
In building a predictive credit scoring model, feature selection is an essential pre-processing step...
Binary scoring model are widely used to support lending decisions in consumer finance. Applications ...
We address the problem of credit scoring as a classification and feature subset selection problem. B...
We address the problem of credit scoring as a classification and feature subset selection problem. B...
Credit risk is one of the most important topics in the risk management. Meanwhile, it is the major r...
Reliable credit scoring models played a very important role of retail banks to evaluate credit appli...
This article belongs to the Special Issue Mathematics and Mathematical Physics Applied to Financial ...
Tremendous growth in the credit industry has spurred the need for Credit Scoring and Its Application...
The increasing amount of credit offered by financial institutions has required intelligent and effic...
In consumer credit markets lending decisions are usually represented as a set of classification prob...
Credit granting is a fundamental question and one of the most complex tasks that every credit instit...
In financial risk, credit risk management is one of the most important issues in financial decision-...
This thesis presents a new scoring method for credit card applications. The method balances the risk...
n this paper, we propose a profit-driven approach for classifier construction and simultaneous varia...
© 2019 In credit scoring, feature selection aims at removing irrelevant data to improve the performa...
In building a predictive credit scoring model, feature selection is an essential pre-processing step...
Binary scoring model are widely used to support lending decisions in consumer finance. Applications ...
We address the problem of credit scoring as a classification and feature subset selection problem. B...
We address the problem of credit scoring as a classification and feature subset selection problem. B...
Credit risk is one of the most important topics in the risk management. Meanwhile, it is the major r...
Reliable credit scoring models played a very important role of retail banks to evaluate credit appli...
This article belongs to the Special Issue Mathematics and Mathematical Physics Applied to Financial ...
Tremendous growth in the credit industry has spurred the need for Credit Scoring and Its Application...
The increasing amount of credit offered by financial institutions has required intelligent and effic...
In consumer credit markets lending decisions are usually represented as a set of classification prob...
Credit granting is a fundamental question and one of the most complex tasks that every credit instit...
In financial risk, credit risk management is one of the most important issues in financial decision-...
This thesis presents a new scoring method for credit card applications. The method balances the risk...
n this paper, we propose a profit-driven approach for classifier construction and simultaneous varia...