DocumentCode
3413830
Title
Credit Scoring Using Ensemble Machine Learning
Author
Yao, Ping
Author_Institution
Sch. of Econ. & Manage., Heilongjiang Inst. of Sci. & Technol., Harbin, China
Volume
3
fYear
2009
fDate
12-14 Aug. 2009
Firstpage
244
Lastpage
246
Abstract
In this study, we applied ensemble machine learning to evaluate credit scoring. With decision tree as the baseline algorithm, two popular ensemble learning methods, bagging and boosting, were evaluated across different experiment conditions: using all 14 features, using selected 6 features on Australian credit data form UCI data set. Results showed that in experiments with all features improved performance was achieved by ensemble learning. The best result was obtained in adaboost CART with 14 features, in which the overall correct rate increases from 83.25% to 85.86%.
Keywords
decision trees; financial data processing; learning (artificial intelligence); bagging method; boosting method; credit scoring; decision tree; machine learning; Bagging; Boosting; Classification tree analysis; Hybrid intelligent systems; Learning systems; Linear discriminant analysis; Logistics; Machine learning; Neural networks; Regression tree analysis; CART; adaboost; bagging; credit scoring; ensemble machine learning;
fLanguage
English
Publisher
ieee
Conference_Titel
Hybrid Intelligent Systems, 2009. HIS '09. Ninth International Conference on
Conference_Location
Shenyang
Print_ISBN
978-0-7695-3745-0
Type
conf
DOI
10.1109/HIS.2009.264
Filename
5254575
Link To Document