Building Customers` Credit Scoring Models with Combination of Feature Selection and Decision Tree Algorithms

Zahra Davoodabadi, Ali Moeini

Abstract


Today`s financial transactions have been increased through banks and financial institutions. Therefore, credit scoring is a critical task to forecast the customers’ credit. We have created 9 different models for the credit scoring by combining three methods of feature selection and three decision tree algorithms. The models are implemented on three datasets and then the accuracy of the models is compared. The two datasets are chosen from the UCI (Australian dataset, German dataset) and a given dataset is considered a Car Leasing Company in Iran. Results show that using feature selection methods with decision tree algorithms (hybrid models) make more accurate models than models without feature selection.

Keywords


classification; customers credit scoring; data mining; decision tree; feature selection

Full Text:

PDF


Lululemon Black Friday cheap nfl jerseys Lululemon factory Outlet ny Black Friday discount tiffany outlet wholesale soccer jerseys online oakley black friday cheap nhl jerseys china cheap nfl jerseys north face black friday sale cheap nfl jerseys online Jordans Black Friday Sale 2015 Cheap Moncler Cyber Monday moncler outlet cheap soccer jerseys moncler outlet black friday cheap authentic nfl jerseys north face cyber monday Louboutin Black Friday canada wholesale cheap nfl jerseys lululemon cyber monday 2015 cheap nfl jerseys from china 2015 Cheap Moncler Black Friday Sale Moncler Cyber Monday 2015 cheap jerseys Lululemon Cyber Monday Sale jordans cyber monday deals 2015 Black Friday deals Lululemon 2015 jordan black friday 2015 Moncler Jackets Black Friday Sale 2015 Louboutin Pas Cher Black Friday 2015 Canada Lululemon north face black friday cheap wholesale soccer jerseys