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Investigating Coverage Guided Fuzzing with Mutation Testing

Authors :
Qian, Ruixiang
Zhang, Quanjun
Fang, Chunrong
Guo, Lihua
Publication Year :
2022

Abstract

Coverage guided fuzzing (CGF) is an effective testing technique which has detected hundreds of thousands of bugs from various software applications. It focuses on maximizing code coverage to reveal more bugs during fuzzing. However, a higher coverage does not necessarily imply a better fault detection capability. Triggering a bug involves not only exercising the specific program path but also reaching interesting program states in that path. In this paper, we use mutation testing to improve CGF in detecting bugs. We use mutation scores as feedback to guide fuzzing towards detecting bugs rather than just covering code. To evaluate our approach, we conduct a well-designed experiment on 5 benchmarks. We choose the state-of-the-art fuzzing technique Zest as baseline and construct two modified techniques on it using our approach. The experimental results show that our approach can improve CGF in both code coverage and bug detection.<br />Comment: Accepted by Internetware 2022, conference, 10 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2203.06910
Document Type :
Working Paper