Revisiting Hyper-Parameter Tuning for Search-based Test Data Generation
June 05, 2019 Β· Declared Dead Β· π International Symposium on Search Based Software Engineering
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Authors
Shayan Zamani, Hadi Hemmati
arXiv ID
1906.02349
Category
cs.SE: Software Engineering
Citations
6
Venue
International Symposium on Search Based Software Engineering
Last Checked
4 months ago
Abstract
Search-based software testing (SBST) has been studied a lot in the literature, lately. Since, in theory, the performance of meta-heuristic search methods are highly dependent on their parameters, there is a need to study SBST tuning. In this study, we partially replicate a previous paper on SBST tool tuning and revisit some of the claims of that paper. In particular, unlike the previous work, our results show that the tuning impact is very limited to only a small portion of the classes in a project. We also argue the choice of evaluation metric in the previous paper and show that even for the impacted classes by tuning, the practical difference between the best and an average configuration is minor. Finally, we will exhaustively explore the search space of hyper-parameters and show that half of the studied configurations perform the same or better than the baseline paper's default configuration.
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