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Ranking Potential Customers Based on Group-Ensemble
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Author(s): Zhi-Zhuo Zhang (South China University of Technology, China), Qiong Chen (South China University of Technology, China), Shang-Fu Ke (South China University of Technology, China), Yi-Jun Wu (South China University of Technology, China), Fei Qi (South China University of Technology, China)and Ying-Peng Zhang (South China University of Technology, China)
Copyright: 2010
Pages: 11
Source title:
Business Information Systems: Concepts, Methodologies, Tools and Applications
Source Author(s)/Editor(s): Information Resources Management Association (USA)
DOI: 10.4018/978-1-61520-969-9.ch048
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Abstract
Ranking potential customers has become an effective tool for company decision makers to design marketing strategies. The task of PAKDD competition 2007 is a cross-selling problem between credit card and home loan, which can also be treated as a ranking potential customers problem. This article proposes a 3-level ranking model, namely Group-Ensemble, to handle such kinds of problems. In our model, Bagging, RankBoost and Expending Regression Tree are applied to solve crucial data mining problems like data imbalance, missing value and time-variant distribution. The article verifies the model with data provided by PAKDD Competition 2007 and shows that Group-Ensemble can make selling strategy much more efficient.
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