Presently, the use of a credit card has become an integral part of contemporary banking and financial system. Predicting potential credit card defaulters or debtors is a crucial business opportunity for financial institutions. For now, some machine learning methods have been applied to achieve this task. However, with the dynamic and imbalanced nature of credit card default data, it is challenging for classical machine learning algorithms to proffer robust models with optimal performance. Research has shown that the performance of machine learning algorithms can be significantly improved when provided with optimal features. In this paper, we propose an unsupervised feature learning method to improve the performance of various classifiers us...
As profitable customer acquisition becomes more and more critical for the banking sector in terms of...
The design of consistent classifiers to forecast credit-granting choices is critical for many financ...
We predict mortgage default by applying convolutional neural networks to consumer transaction data. ...
Abstract: Presently, credit card the use has become a critical part of contemporary banking and pred...
Credit card defaults pause a business-critical threat in banking systems thus prompt detection of de...
The purpose of this research is to compare seven machine learning methods to predict customer’s cred...
The ability of financial institutions to detect whether a customer will default on their credit card...
This paper aims to apply multiple machine learning algorithms to analyze the default payment of cred...
Financial threats are displaying a trend about the credit risk of commercial banks as the incredible...
Credit card defaulters are on the rise year by year, which would lead commercial banks into a seriou...
Aiming at the problem that the credit card default data of a financial institution is unbalanced, wh...
Data mining and Machine learning are the emerging technologies that are rapidly spreading in every f...
Abstract—In this paper, a loan default prediction model is constricted using three different trainin...
This master thesis explore the potential of Machine Learning techniques in predicting default of veh...
Despite recent improvements in machine-learning prediction methods, the methods used by most lenders...
As profitable customer acquisition becomes more and more critical for the banking sector in terms of...
The design of consistent classifiers to forecast credit-granting choices is critical for many financ...
We predict mortgage default by applying convolutional neural networks to consumer transaction data. ...
Abstract: Presently, credit card the use has become a critical part of contemporary banking and pred...
Credit card defaults pause a business-critical threat in banking systems thus prompt detection of de...
The purpose of this research is to compare seven machine learning methods to predict customer’s cred...
The ability of financial institutions to detect whether a customer will default on their credit card...
This paper aims to apply multiple machine learning algorithms to analyze the default payment of cred...
Financial threats are displaying a trend about the credit risk of commercial banks as the incredible...
Credit card defaulters are on the rise year by year, which would lead commercial banks into a seriou...
Aiming at the problem that the credit card default data of a financial institution is unbalanced, wh...
Data mining and Machine learning are the emerging technologies that are rapidly spreading in every f...
Abstract—In this paper, a loan default prediction model is constricted using three different trainin...
This master thesis explore the potential of Machine Learning techniques in predicting default of veh...
Despite recent improvements in machine-learning prediction methods, the methods used by most lenders...
As profitable customer acquisition becomes more and more critical for the banking sector in terms of...
The design of consistent classifiers to forecast credit-granting choices is critical for many financ...
We predict mortgage default by applying convolutional neural networks to consumer transaction data. ...