Defect prediction guided search-based software testing


연구 분야: Verification



학회: ASE '20: Proceedings of the 35th IEEE/ACM International Conference on Automated Software Engineering


초록

Today, most automated test generators, such as search-based software testing (SBST) techniques focus on achieving high code coverage. However, high code coverage is not sufficient to maximise the number of bugs found, especially when given a limited testing budget. In this paper, we propose an automated test generation technique that is also guided by the estimated degree of defectiveness of the source code. Parts of the code that are likely to be more defective receive more testing budget than the less defective parts. To measure the degree of defectiveness, we leverage Schwa, a notable defect prediction technique. We implement our approach into EvoSuite, a state of the art SBST tool for Java. Our experiments on the Defects4J benchmark demonstrate the improved efficiency of defect prediction guided test generation and confirm our hypothesis that spending more time budget on likely defective parts increases the number of bugs found in the same time budget.


Author Profile
Anjana Perera

Monash University Melbourne Australia

Australia
Author Profile
Aldeida Aleti

Monash University Melbourne Australia

Australia
Author Profile
Marcel Böhme

Monash University Melbourne Australia

Australia

📄 논문 정보

발행 연도 2021년
인용수 15
출판 국가 Australia
사이트 ACM
좋아요 수 0

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