Two credit scoring models based on dual strategy ensemble trees

Volume: 26, Pages: 61 - 68
Published: Feb 1, 2012
Abstract
Decision tree (DT) is one of the most popular classification algorithms in data mining and machine learning. However, the performance of DT based credit scoring model is often relatively poorer than other techniques. This is mainly due to two reasons: DT is easily affected by (1) the noise data and (2) the redundant attributes of data under the circumstance of credit scoring. In this study, we propose two dual strategy ensemble trees: RS-Bagging...
Paper Details
Title
Two credit scoring models based on dual strategy ensemble trees
Published Date
Feb 1, 2012
Volume
26
Pages
61 - 68
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