Customer churn prediction using improved balanced random forests

Volume: 36, Issue: 3, Pages: 5445 - 5449
Published: Apr 1, 2009
Abstract
Churn prediction is becoming a major focus of banks in China who wish to retain customers by satisfying their needs under resource constraints. In churn prediction, an important yet challenging problem is the imbalance in the data distribution. In this paper, we propose a novel learning method, called improved balanced random forests (IBRF), and demonstrate its application to churn prediction. We investigate the effectiveness of the standard...
Paper Details
Title
Customer churn prediction using improved balanced random forests
Published Date
Apr 1, 2009
Volume
36
Issue
3
Pages
5445 - 5449
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