English

Genetic Micro-Programs for Automated Software Testing with Large Path Coverage

Neural and Evolutionary Computing 2023-02-16 v1 Artificial Intelligence Software Engineering

Abstract

Ongoing progress in computational intelligence (CI) has led to an increased desire to apply CI techniques for the purpose of improving software engineering processes, particularly software testing. Existing state-of-the-art automated software testing techniques focus on utilising search algorithms to discover input values that achieve high execution path coverage. These algorithms are trained on the same code that they intend to test, requiring instrumentation and lengthy search times to test each software component. This paper outlines a novel genetic programming framework, where the evolved solutions are not input values, but micro-programs that can repeatedly generate input values to efficiently explore a software component's input parameter domain. We also argue that our approach can be generalised such as to be applied to many different software systems, and is thus not specific to merely the particular software component on which it was trained.

Keywords

Cite

@article{arxiv.2302.07646,
  title  = {Genetic Micro-Programs for Automated Software Testing with Large Path Coverage},
  author = {Jarrod Goschen and Anna Sergeevna Bosman and Stefan Gruner},
  journal= {arXiv preprint arXiv:2302.07646},
  year   = {2023}
}

Comments

A version of this paper has been accepted for publication in CEC'22