Amirul ZaimJohanna AhmadNoor Hidayah ZakariaGoh Eg SuHidra Amnur
Software fault prediction is widely used in the software development industry. Moreover, software development has accelerated significantly during this epidemic. However, the main problem is that most fault prediction models disregard object-oriented metrics, and even academician researcher concentrate on predicting software problems early in the development process. This research highlights a procedure that includes an object-oriented metric to predict the software fault at the class level and feature selection techniques to assess the effectiveness of the machine learning algorithm to predict the software fault. This research aims to assess the effectiveness of software fault prediction using feature selection techniques. In the present work, software metric has been used in defect prediction. Feature selection techniques were included for selecting the best feature from the dataset. The results show that process metric had slightly better accuracy than the code metric.
Myo Wai ThantNyein Thwet Thwet Aung
Shamsul HudaSultan AlyahyaMd. Mohsin AliShafiq AhmadJemal AbawajyHmood Al-DossariJohn Yearwood
F SethO TaipaleK SmolanderJ RodgerF AparisiJ SanzH YadavandD YadavC.-N HsuH.-J HuangS DietrichR KohaviG JohnK BalaganiV PhohaN Venkata RamanaC KolliT Ravi KumarP NageshHudaShamsulR TataS MotheP KoneruN Venkata RamanaB SadhanaD RadjenoviM HerioR TorkarA SivkoviT KrishnaLakshmi SivaThirumalaisamy RamaRagunathanB KrishnaKodukula ChaitanyaTai-Hoon SubrahmanyamKimY PrasanthE SreedeviN GayathriA RahulM HussainKiran KumarK Venkata AvinashJ VinaySai KumarPE SreedeviY PrasanthE SreedeviV PremalathaS SivakumarS NayakRaghava VenkataY RaoR BurriV PrasadH HashimotoS ShahabuddinP YallaD MalleswariT SowmyaK MukhulD Reddy
Huanjing WangTaghi M. KhoshgoftaarJason Van HulseKehan Gao
Vipul VashishtManohar LalG.S. Sureshchandar