多域产品线的通用解空间抽样

Marc Hentze, T. Pett, Chico Sundermann, S. Krieter, Thomas Thüm, Ina Schaefer
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引用次数: 3

摘要

验证可配置软件系统是具有挑战性的,因为可能存在数百万个配置,这使得单独测试每个配置变得不可行。因此,现有的抽样算法允许计算一个具有代表性的配置子集,称为样本,可以进行测试。但是,对配置集进行采样可能会错过实现级别上的潜在错误源。在本文中,我们提出了解空间采样,这个概念通过允许在实现级别上直接采样来缓解这个问题。我们将解决方案空间采样应用于六个现实世界的汽车产品线,并表明它产生了多达56%的小样本,同时还覆盖了问题空间采样遗漏的所有潜在误差源。
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Generic Solution-Space Sampling for Multi-domain Product Lines
Validating a configurable software system is challenging, as there are potentially millions of configurations, which makes testing each configuration individually infeasible. Thus, existing sampling algorithms allow to compute a representative subset of configurations, called sample, that can be tested instead. However, sampling on the set of configurations may miss potential error sources on implementation level. In this paper, we present solution-space sampling, a concept that mitigates this problem by allowing to sample directly on the implementation level. We apply solution-space sampling to six real-word, automotive product lines and show that it produces up to 56 % smaller samples, while also covering all potential error sources missed by problem-space sampling.
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