Publication | Open Access
Towards statistical prioritization for software product lines testing
38
Citations
23
References
2014
Year
Unknown Venue
Software MaintenanceEngineeringVerificationSoftware EngineeringSpl BehaviourSoftware AnalysisFormal VerificationModel-based TestingComputational TestingData ScienceData MiningTest AutomationSystems EngineeringMarkov ChainQuantitative ManagementTowards Statistical PrioritizationKnowledge DiscoverySoftware Product LineComputer ScienceSoftware Product LinesSoftware DesignProgram AnalysisSoftware TestingBusinessTest Case DesignCombinatorial Testing WorkflowTest EvolutionSystem Software
Software Product Lines (SPLs) are inherently difficult to test due to the combinatorial explosion of the number of products to consider. To reduce the number of products to test, sampling techniques such as combinatorial interaction testing have been proposed. They usually start from a feature model and apply a coverage criterion (e.g. pairwise feature interaction or dissimilarity) to generate tractable, fault-finding, lists of configurations to be tested. Prioritization can also be used to sort/generate such lists, optimizing coverage criteria or weights assigned to features. However, current sampling/prioritization techniques barely take product behaviour into account. We explore how ideas of statistical testing, based on a usage model (a Markov chain), can be used to extract configurations of interest according to the likelihood of their executions. These executions are gathered in featured transition systems, compact representation of SPL behaviour. We discuss possible scenarios and give a prioritization procedure validated on a web-based learning management software.
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