基于故障的产品线测试:基于特征图突变的有效样本生成

Dennis Reuling, Johannes Bürdek, Serge Rotärmel, Malte Lochau, U. Kelter
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引用次数: 35

摘要

由于有大量可能的产品配置,单独测试产品线的每个成员通常是不切实际的。因此,特征模型经常被用来生成样本,即被测产品配置的子集。除了被广泛研究的用于覆盖驱动的样本生成的组合交互测试(CIT)方法外,目前很少有方法采用突变测试来模拟由样本检测的特征模型中的故障。在本文中,我们提出了一个基于突变的采样框架,用于基于故障的产品线测试。我们在特征模型的图形表示上定义了一个全面的原子突变算子目录。这样,我们就能够(1)定义复杂的突变算子来模拟更细微的故障,(2)对算子进行语义分类,例如,避免冗余和等效的突变。我们进一步引入基于相似性的突变选择和高阶突变策略来减少测试工作。我们的实现基于图形转换引擎Henshin,并根据有效性/效率权衡进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault-based product-line testing: effective sample generation based on feature-diagram mutation
Testing every member of a product line individually is often impracticable due to large number of possible product configurations. Thus, feature models are frequently used to generate samples, i.e., subsets of product configurations under test. Besides the extensively studied combinatorial interaction testing (CIT) approach for coverage-driven sample generation, only few approaches exist so far adopting mutation testing to emulate faults in feature models to be detected by a sample. In this paper, we present a mutation-based sampling framework for fault-based product-line testing. We define a comprehensive catalog of atomic mutation operators on the graphical representation of feature models. This way, we are able (1) to also define complex mutation operators emulating more subtle faults, and (2) to classify operators semantically, e.g., to avoid redundant and equivalent mutants. We further introduce similarity-based mutant selection and higher order mutation strategies to reduce testing efforts. Our implementation is based on the graph transformation engine Henshin and is evaluated concerning effectiveness/efficiency trade-offs.
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