Konferans bildirisi Açık Erişim
Catal, C.; Sevim, U.; Diri, B.
Software metrics and fault data belonging to a previous software version are used to build the software fault prediction model for the next release of the software. Until now, different classification algorithms have been used to build this kind of models. However, there are cases when previous fault data are not present; and hence, supervised learning approaches cannot be applied. In this study, we propose a fully automated technique which does not require an expert during the prediction process. In addition, it is not required to identify the number of clusters before the clustering phase, as required by K-means clustering method. Software metrics thresholds are used to remove the expert necessity.
| Dosya adı | Boyutu | |
|---|---|---|
|
bib-a55b13fd-10f7-491d-8a21-5e0e7b2f46e3.txt
md5:1b6e6aeb966620d22289934371aa6012 |
145 Bytes | İndir |
| Görüntülenme | 60 |
| İndirme | 9 |
| Veri hacmi | 1.3 kB |
| Tekil görüntülenme | 57 |
| Tekil indirme | 9 |