2023
DOI: 10.11591/ijeecs.v32.i1.pp478-493
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Improving the accuracy of recurrent neural networks models in predicting software bug based on undersampling methods

Nasraldeen Alnor Adam Khleel,
Károly Nehéz

Abstract: <span>The process of identifying software bugs is of paramount importance as it ensures software reliability and facilitates maintenance activities. The quality improvement process of software relies heavily on software bug prediction (SBP). In SBP, the task of accurately identifying defective source code poses a significant challenge. Numerous of machine learning (ML) models has been developed specifically to address this challenge in SBP. Nonetheless, the class imbalance issue restricts the potential o… Show more

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