集群支持不足的测试套件减少

Carmen Coviello, Simone Romano, G. Scanniello, A. Marchetto, G. Antoniol, A. Corazza
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引用次数: 22

摘要

回归测试是一项重要的活动,但它可能是昂贵的(例如,对于大型测试套件)。测试套件缩减方法通过移除冗余的测试用例来加速回归测试。这些方法可分为适当或不适当。适当的方法减少测试套件,以便它们完全保留原始测试套件的测试需求(例如,代码覆盖率)。不充分的方法会产生减少的测试套件,只会部分保留测试需求。当不适当的方法以故障检测能力的小损失为代价导致测试套件大小的更大减少时,它是有吸引力的。我们研究了一种基于聚类的方法来减少不充分的测试套件,并将其与众所周知的适当方法进行比较。我们的调查是建立在一个公共数据集上的,并允许对测试套件减少中的权衡进行探索。使用本研究中定义的指导方针,结果有助于做出更明智的决策,以在使用集群时平衡缩减的测试套件的大小、覆盖率和故障检测损失。
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Clustering support for inadequate test suite reduction
Regression testing is an important activity that can be expensive (e.g., for large test suites). Test suite reduction approaches speed up regression testing by removing redundant test cases. These approaches can be classified as adequate or inadequate. Adequate approaches reduce test suites so that they completely preserve the test requirements (e.g., code coverage) of the original test suites. Inadequate approaches produce reduced test suites that only partially preserve the test requirements. An inadequate approach is appealing when it leads to a greater reduction in test suite size at the expense of a small loss in fault-detection capability. We investigate a clustering-based approach for inadequate test suite reduction and compare it with well-known adequate approaches. Our investigation is founded on a public dataset and allows an exploration of trade-offs in test suite reduction. Results help a more informed decision, using guidelines defined in this research, to balance size, coverage, and fault-detection loss of reduced test suites when using clustering.
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