Background. Due to an increasing number of credit card defaulters, companies arenow taking greater precautions when approving credit applications. When a customermeets certain requirements, credit card firms typically use their experience todecide whether to grant them a credit card. Additionally, a few machine learningmethods have been applied to support the final decision. Objectives. The aim of this thesis is to compare the accuracy of logistic regressionclassifier, random forest classifier, and support vector classifier with the ensemblebagging classifier for predicting credit card approval. Methods. This thesis follows a method called general experimentation to determinethe most accurate classification technique for predicting credit c...
In the context of credit scoring, ensemble methods based on decision trees, such as the random fores...
The credit card customer churn rate is the percentage of a bank’s customers that stop using that ban...
AbstractIn this paper, we set out to compare several techniques that can be used in the analysis of ...
Credit risk as the board in banks basically centers around deciding the probability of a customer's ...
In the banking sector, every banking infrastructure contains an enormous dataset for customers’ cred...
As we all know, Every day, commercial banks get a large number of credit card applications. Many of ...
The purpose of this research is to compare seven machine learning methods to predict customer’s cred...
Credit risk plays a major role in the banking industry business. Banks' main activities involve gran...
Summarization: During the last two decades credit cards have became one of the main ways for accompl...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
Banking Industry always needs a more accurate predictive modeling system for many issues. Predicting...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
Summarization: During the last two decades credit cards have became one of the main ways for accompl...
The use of statistical classification techniques in classifying loan applications into good loans an...
In this master thesis we apply a variation of different machine learning techniques on a dataset for...
In the context of credit scoring, ensemble methods based on decision trees, such as the random fores...
The credit card customer churn rate is the percentage of a bank’s customers that stop using that ban...
AbstractIn this paper, we set out to compare several techniques that can be used in the analysis of ...
Credit risk as the board in banks basically centers around deciding the probability of a customer's ...
In the banking sector, every banking infrastructure contains an enormous dataset for customers’ cred...
As we all know, Every day, commercial banks get a large number of credit card applications. Many of ...
The purpose of this research is to compare seven machine learning methods to predict customer’s cred...
Credit risk plays a major role in the banking industry business. Banks' main activities involve gran...
Summarization: During the last two decades credit cards have became one of the main ways for accompl...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
Banking Industry always needs a more accurate predictive modeling system for many issues. Predicting...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
Summarization: During the last two decades credit cards have became one of the main ways for accompl...
The use of statistical classification techniques in classifying loan applications into good loans an...
In this master thesis we apply a variation of different machine learning techniques on a dataset for...
In the context of credit scoring, ensemble methods based on decision trees, such as the random fores...
The credit card customer churn rate is the percentage of a bank’s customers that stop using that ban...
AbstractIn this paper, we set out to compare several techniques that can be used in the analysis of ...