Automatically learning semantic features for defect prediction

Song Wang(University of Waterloo), Taiyue Liu(University of Waterloo), Lin Tan(University of Waterloo)
Unknown
May 13, 2016
Cited by 692

Abstract

Software defect prediction, which predicts defective code regions, can help developers find bugs and prioritize their testing efforts. To build accurate prediction models, previous studies focus on manually designing features that encode the characteristics of programs and exploring different machine learning algorithms. Existing traditional features often fail to capture the semantic differences of programs, and such a capability is needed for building accurate prediction models.


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