Affiliation:
1. The University of Sheffield
2. The University of Birmingham
3. Brunel University
4. Universidad de Sevilla
5. Southern University of Science and Technology and The University of Birmingham
Abstract
A Software Product Line (SPL) is a set of products built from a number of features, the set of valid products being defined by a feature model. Typically, it does not make sense to test all products defined by an SPL and one instead chooses a set of products to test (test selection) and, ideally, derives a good order in which to test them (test prioritisation). Since one cannot know in advance which products will reveal faults, test selection and prioritisation are normally based on objective functions that are known to relate to likely effectiveness or cost. This article introduces a new technique, the grid-based evolution strategy (GrES), which considers several objective functions that assess a selection or prioritisation and aims to optimise on all of these. The problem is thus a many-objective optimisation problem. We use a new approach, in which all of the objective functions are considered but one (pairwise coverage) is seen as the most important. We also derive a novel evolution strategy based on domain knowledge. The results of the evaluation, on randomly generated and realistic feature models, were promising, with GrES outperforming previously proposed techniques and a range of many-objective optimisation algorithms.
Funder
Engineering and Physical Sciences Research Council
European Commission
Program for Guangdong Introducing Innovative and Enterpreneurial Teams
Shenzhen Peacock Plan
Science and Technology Innovation Committee Foundation of Shenzhen
Publisher
Association for Computing Machinery (ACM)
Cited by
18 articles.
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