Title
An extensive analysis of search-based techniques for predicting defective classes.
Abstract
In spite of constant planning, effective documentation and proper implementation of a software during its life cycle, many defects still occur. Various empirical studies have found that prediction models developed using software metrics can be used to predict these defects. Researchers have advocated the use of search-based techniques and their hybridized versions in literature for developing software quality prediction models. This study conducts an extensive comparison of 20 search-based techniques, 16 hybridized techniques and 17 machine-learning techniques amongst each other, to develop software defect prediction models using 17 data sets. The comparison framework used in the study is efficient as it (i) deals with the stochastic nature of the techniques (ii) provides a fair comparison amongst the techniques (iii) promotes repeatability of the study and (iv) statistically validates the results. The results of the study indicate promising ability of search-based techniques and their hybridized versions for predicting defective classes.
Year
DOI
Venue
2018
10.1016/j.compeleceng.2018.08.017
Computers & Electrical Engineering
Keywords
Field
DocType
Defect prediction,Object-oriented metrics,Search-based techniques,Hybridized techniques,Empirical validation
Data set,Computer science,Software bug,Real-time computing,Software quality prediction,Software,Artificial intelligence,Software metric,Predictive modelling,Documentation,Empirical research,Machine learning
Journal
Volume
ISSN
Citations 
71
0045-7906
0
PageRank 
References 
Authors
0.34
21
1
Name
Order
Citations
PageRank
Ruchika Malhotra153335.12