Authors
Javier Ferrer, Peter M Kruse, Francisco Chicano, Enrique Alba
Publication date
2012/7/7
Conference
Proceedings of the 14th annual conference on Genetic and evolutionary computation
Pages
1213-1220
Publisher
ACM
Description
Combinatorial Interaction Testing (CIT) is a technique used to discover faults caused by parameter interactions in highly configurable systems. These systems tend to be large and exhaustive testing is generally impractical. Indeed, when the resources are limited, prioritization of test cases is a must. Important test cases are assigned a high priority and should be executed earlier. On the one hand, the prioritization of test cases may reveal faults in early stages of the testing phase. But, on the other hand the generation of minimal test suites that fulfill the demanded coverage criteria is an NP-hard problem. Therefore, search based approaches are required to find the (near) optimal test suites. In this work we present a novel evolutionary algorithm to deal with this problem. The experimental analysis compares five techniques on a set of benchmarks. It reveals that the evolutionary approach is clearly the best in our …
Total citations
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Scholar articles
J Ferrer, PM Kruse, F Chicano, E Alba - Proceedings of the 14th annual conference on Genetic …, 2012