Authors
Aldeida Aleti, Irene Moser, Lars Grunske
Publication date
2017/9
Journal
Automated Software Engineering
Volume
24
Pages
603-621
Publisher
Springer US
Description
Search-based software testing automatically derives test inputs for a software system with the goal of improving various criteria, such as branch coverage. In many cases, evolutionary algorithms are implemented to find near-optimal test suites for software systems. The result of the search is usually received without any indication of how successful the search has been. Fitness landscape characterisation can help understand the search process and its probability of success. In this study, we recorded the information content, negative slope coefficient and the number of improvements during the progress of a genetic algorithm within the EvoSuite framework. Correlating the metrics with the branch and method coverages and the fitness function values reveals that the problem formulation used in EvoSuite could be improved by revising the objective function. It also demonstrates that given the current formulation …
Total citations
20162017201820192020202120222023202421111098254
Scholar articles