In this work we present a novel ensemble model for a credit scoring problem. The main idea of the approach is to incorporate separate beta binomial distributions for each of the classes to generate balanced datasets that are further used to construct base learners that constitute the final ensemble model. The sampling procedure is performed on two separate ranking lists, each for one class, where the ranking is based on prepotency of observing positive class. Two strategies are considered: one assumes mining easy examples and the second one forces good classification of hard cases. The proposed solutions are tested on two big datasets on credit scoring
Lending loans to borrowers is considered one of the main profit sources for banks and financial inst...
Credit scoring models are the cornerstone of the modern financial industry. After years of developme...
Imbalanced credit data sets refer to databases in which the class of defaulters is heavily under-rep...
In this work we present a novel ensemble model for a credit scoring problem. The main idea of the a...
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, ...
Credit risk assessment plays an important role in efficient and safe banking decision-making. Many s...
[[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...
Several credit-scoring models have been developed using ensemble classifiers in order to improve the...
The big data revolution and recent advancements in computing power have increased the interest in cr...
Recently, various ensemble learning methods with different base classifiers have been proposed for c...
AbstractThe big data revolution and recent advancements in computing power have increased the intere...
Many techniques have been proposed for credit risk assessment, from statistical models to artificial...
Lending loans to borrowers is considered one of the main profit sources for banks and financial inst...
Lending loans to borrowers is considered one of the main profit sources for banks and financial inst...
Credit scoring models are the cornerstone of the modern financial industry. After years of developme...
Imbalanced credit data sets refer to databases in which the class of defaulters is heavily under-rep...
In this work we present a novel ensemble model for a credit scoring problem. The main idea of the a...
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, ...
Credit risk assessment plays an important role in efficient and safe banking decision-making. Many s...
[[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...
Several credit-scoring models have been developed using ensemble classifiers in order to improve the...
The big data revolution and recent advancements in computing power have increased the interest in cr...
Recently, various ensemble learning methods with different base classifiers have been proposed for c...
AbstractThe big data revolution and recent advancements in computing power have increased the intere...
Many techniques have been proposed for credit risk assessment, from statistical models to artificial...
Lending loans to borrowers is considered one of the main profit sources for banks and financial inst...
Lending loans to borrowers is considered one of the main profit sources for banks and financial inst...
Credit scoring models are the cornerstone of the modern financial industry. After years of developme...
Imbalanced credit data sets refer to databases in which the class of defaulters is heavily under-rep...