Published: July 01, 2012Manuscript Received: December 13, 2011Released on J-STAGE: July 01, 2012Accepted: -
Advance online publication: -
Manuscript Revised: March 05, 2012
An asymmetric classifier based on kernel partial least squares is proposed for software defect prediction. This method improves the prediction performance on imbalanced data sets. The experimental results validate its effectiveness.