Assessing and Improving the Mutation Testing Practice of PIT
January 11, 2016 Β· Declared Dead Β· π International Conference on Information Control Systems & Technologies
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Authors
Thomas Laurent, Anthony Ventresque, Mike Papadakis, Christopher Henard, Yves Le Traon
arXiv ID
1601.02351
Category
cs.SE: Software Engineering
Citations
61
Venue
International Conference on Information Control Systems & Technologies
Last Checked
3 months ago
Abstract
Mutation testing is used extensively to support the experimentation of software engineering studies. Its application to real-world projects is possible thanks to modern tools that automate the whole mutation analysis process. However, popular mutation testing tools use a restrictive set of mutants which do not conform to the community standards as supported by the mutation testing literature. This can be problematic since the effectiveness of mutation depends on its mutants. We therefore examine how effective are the mutants of a popular mutation testing tool, named PIT, compared to comprehensive ones, as drawn from the literature and personal experience. We show that comprehensive mutants are harder to kill and encode faults not captured by the mutants of PIT for a range of 11% to 62% of the Java classes of the considered projects.
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