Software Defect Prediction Using Dagging Meta-Learner-Based Classifiers

Author:

Babatunde Akinbowale1,Ogundokun Roseline23ORCID,Adeoye Latifat4,Misra Sanjay5

Affiliation:

1. Department of Computer Science, Kwara State University, Ilorin 241103, Nigeria

2. Department of Multimedia Engineering, Kaunas University of Technology, 44249 Kaunas, Lithuania

3. Department of Computer Science, Landmark University, Omu Aran 251103, Nigeria

4. Department of Computer Science, University of Ilorin, Ilorin 240003, Nigeria

5. Department of Applied Data Science, Institute of Energy Technology, 1777 Halden, Norway

Abstract

To guarantee that software does not fail, software quality assurance (SQA) teams play a critical part in the software development procedure. As a result, prioritizing SQA activities is a crucial stage in SQA. Software defect prediction (SDP) is a procedure for recognizing high-risk software components and determining the influence of software measurements on the likelihood of software modules failure. There is a continuous need for sophisticated and better SDP models. Therefore, this study proposed the use of dagging-based and baseline classifiers to predict software defects. The efficacy of the dagging-based SDP model for forecasting software defects was examined in this study. The models employed were naïve Bayes (NB), decision tree (DT), and k-nearest neighbor (kNN), and these models were used on nine NASA datasets. Findings from the experimental results indicated the superiority of SDP models based on dagging meta-learner. Dagging-based models significantly outperformed experimented baseline classifiers built on accuracy, the area under the curve (AUC), F-measure, and precision-recall curve (PRC) values. Specifically, dagging-based NB, DT, and kNN models had +6.62%, +3.26%, and +4.14% increments in average accuracy value over baseline NB, DT, and kNN models. Therefore, it can be concluded that the dagging meta-learner can advance the recognition performances of SDP methods and should be considered for SDP processes.

Publisher

MDPI AG

Subject

General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)

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