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µBert: Mutation Testing using Pre-Trained Language Models

Renzo Degiovanni, Mike Papadakis

202227 citationsDOIOpen Access PDF

Abstract

We introduce µBert, a mutation testing tool that uses a pre-trained language model (CodeBERT) to generate mutants. This is done by masking a token from the expression given as input and using CodeBERT to predict it. Thus, the mutants are generated by replacing the masked tokens with the predicted ones. We evaluate µBert on 40 real faults from Defects4J and show that it can detect 27 out of the 40 faults, while the baseline (PiTest) detects 26 of them. We also show that µBert can be 2 times more cost-effective than PiTest, when the same number of mutants are analysed. Additionally, we evaluate the impact of µBert’s mutants when used by program assertion inference techniques, and show that they can help in producing better specifications. Finally, we discuss about the quality and naturalness of some interesting mutants produced by µBert during our experimental evaluation.

Topics & Concepts

Computer scienceSecurity tokenNaturalnessMasking (illustration)Mutation testingInferenceMutationProcess (computing)Language modelProgramming languageArtificial intelligenceOperating systemVisual artsQuantum mechanicsPhysicsGeneArtChemistryBiochemistrySoftware Testing and Debugging TechniquesSoftware Engineering ResearchSoftware Reliability and Analysis Research