Ensemble learning techniques are widely applied to classification tasks such as credit-risk evaluation. As for most credit-risk evaluation scenarios in the real world, only imbalanced data are available for model construction, and the performance of ensemble models still needs to be improved. An ideal ensemble algorithm is supposed to improve diversity in an effective manner. Therefore, we provide an insight in considering an ensemble diversity-promotion method for imbalanced learning tasks. A novel ensemble structure is proposed, which combines self-adaptive optimization techniques and a diversity-promotion method (SA-DP Forest). Additional artificially constructed samples, generated by a fuzzy sampling method at each iteration, directly c...
In this paper, we set out to compare several techniques that can be used in the analysis of imbalanc...
This paper mainly discusses the hybrid application of ensemble learning, classification, and feature...
Lenders, such as banks and credit card companies, use credit scoring models to evaluate the potentia...
Many techniques have been proposed for credit risk assessment, from statistical models to artificial...
Credit risk assessment plays an important role in efficient and safe banking decision-making. Many s...
Credit scoring for loan applicants is an essential measure to reduce the risk of personal credit loa...
Credit scoring for loan applicants is an essential measure to reduce the risk of personal credit loa...
Credit scoring for loan applicants is an essential measure to reduce the risk of personal credit loa...
Many real-life problems can be described as unbalanced, where the number of instances belonging to o...
Part 8: Business Intelligence and SecurityInternational audienceNowadays, compared with the traditio...
Credit scoring models are the cornerstone of the modern financial industry. After years of developme...
Credit evaluation of customers is a critical issue in financial organizations. Classification algori...
Credit scoring is very important process in banking industry during which each potential or current ...
Abstract — Many real-world applications have problems when learning from imbalanced data sets, such ...
AbstractIn this paper, we set out to compare several techniques that can be used in the analysis of ...
In this paper, we set out to compare several techniques that can be used in the analysis of imbalanc...
This paper mainly discusses the hybrid application of ensemble learning, classification, and feature...
Lenders, such as banks and credit card companies, use credit scoring models to evaluate the potentia...
Many techniques have been proposed for credit risk assessment, from statistical models to artificial...
Credit risk assessment plays an important role in efficient and safe banking decision-making. Many s...
Credit scoring for loan applicants is an essential measure to reduce the risk of personal credit loa...
Credit scoring for loan applicants is an essential measure to reduce the risk of personal credit loa...
Credit scoring for loan applicants is an essential measure to reduce the risk of personal credit loa...
Many real-life problems can be described as unbalanced, where the number of instances belonging to o...
Part 8: Business Intelligence and SecurityInternational audienceNowadays, compared with the traditio...
Credit scoring models are the cornerstone of the modern financial industry. After years of developme...
Credit evaluation of customers is a critical issue in financial organizations. Classification algori...
Credit scoring is very important process in banking industry during which each potential or current ...
Abstract — Many real-world applications have problems when learning from imbalanced data sets, such ...
AbstractIn this paper, we set out to compare several techniques that can be used in the analysis of ...
In this paper, we set out to compare several techniques that can be used in the analysis of imbalanc...
This paper mainly discusses the hybrid application of ensemble learning, classification, and feature...
Lenders, such as banks and credit card companies, use credit scoring models to evaluate the potentia...