Bug numbers matter: An empirical study of effort‐aware defect prediction using class labels versus bug numbers
Peixin Yang,
Ziyao Zeng,
Lin Zhu
et al.
Abstract:Previous research have utilized public software defect datasets such as NASA, RELINK, and SOFTLAB, which only contain class label information. Most effort‐aware defect prediction (EADP) studies are carried out around these datasets. However, EADP studies typically relying on predicted bug number (i.e., considering modules as effort) or density (i.e., considering lines of code as effort) for ranking software modules. To explore the impact of bug number information in constructing EADP models, we access the perf… Show more
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