Efficient JavaScript Mutation Testing
Shabnam Mirshokraie,Ali Mesbah,Karthik Pattabiraman +2 more
- 18 Mar 2013
- pp 74-83
86
TL;DR: This paper proposes a technique that leverages static and dynamic program analysis to guide the mutation generation process a-priori towards parts of the code that are error-prone or likely to influence the program's output.
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Abstract: Mutation testing is an effective test adequacy assessment technique. However, it suffers from two main issues. First, there is a high computational cost in executing the test suite against a potentially large pool of generated mutants. Second, there is much effort involved in filtering out equivalent mutants, which are syntactically different but semantically identical to the original program. Prior work has mainly focused on detecting equivalent mutants after the mutation generation phase, which is computationally expensive and has limited efficiency. In this paper, we propose a technique that leverages static and dynamic program analysis to guide the mutation generation process a-priori towards parts of the code that are error-prone or likely to influence the program's output. Further, we focus on the JavaScript language, and propose a set of mutation operators that are specific to web applications. We implement our approach in a tool called MUTANDIS. We empirically evaluate MUTANDIS on a number of web applications to assess the efficacy of the approach.
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Citations
Guess What: Test Case Generation for Javascript with Unsupervised Probabilistic Type Inference
Dimitri Michel Stallenberg,Mitchell Olsthoorn,Annibale Panichella +2 more
- 01 Jan 2022
TL;DR: This paper proposes an unsupervised probabilistic type inference approach to infer data types within the test case generation process and shows that integrating unsuper supervised probabilism type inference improves branch coverage compared to random type sampling.
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