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Empirical evaluation of ensemble learning for credit scoring

  • Gang Wang*
  • , Jin Xing Hao
  • , Jian Ma
  • , Li Hua Huang
  • *此作品的通讯作者

科研成果: 书/报告/会议事项章节章节同行评审

摘要

Credit scoring is an important finance activity. Both statistical techniques and Artificial Intelligence (AI) techniques have been explored for this topic. But different techniques have different advantages and disadvantages on different datasets. Recent studies draw no consistent conclusions to show that one technique is superior to the other, while they suggest combining multiple classifiers, i.e., ensemble learning, may have a better performance. In this study, we conduct an empirical evaluation of the performance of three popular ensemble methods, i.e., bagging, boosting, and stacking, based on four base learners, i.e., Logistic Regression Analysis (LRA), Decision Tree (DT), Artificial Neural Network (ANN) and Support Vector Machine (SVM). The experiment uses the credit dataset including 239 companies' financial records from China, collected by the Industrial and Commercial Bank of China. Results reveal that ensemble learning can substantially improve individual base learners. Stacking, in our experiments, gets the best performance in terms of all six performance indicators, i.e., type I error, type II error, average accuracy, precision, recall, and F-value.

源语言英语
主期刊名Machine Learning
主期刊副标题Concepts, Methodologies, Tools and Applications
出版商IGI Global
1108-1127
页数20
2-3
ISBN(电子版)9781609608194
ISBN(印刷版)9781609608187
DOI
出版状态已出版 - 31 7月 2011
已对外发布

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