突变体选择评估指标的实证比较

J Zhang, Lingming Zhang, Dan Hao, Lu Zhang, M. Harman
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引用次数: 2

摘要

由于大量的突变体,突变检测是昂贵的,这个问题通常使用选择技术来解决,从而提出了如何评估选择过程的基本问题。现有的突变选择方法依赖于两种类型的度量(或评估标准)之一,一种基于充分的测试集,另一种基于不充分的测试集。这就提出了一个问题,即这两个指标是否相互关联、互补或相互替代。测试者对突变体选择的信心,以及之前仅使用一个度量的研究工作的有效性,都依赖于这个问题的答案,但目前这个问题仍然没有答案。为了回答这个问题,我们对104个不同的项目进行了定性和定量的比较,这些项目由60多万行代码组成。我们的结果表明,两种类型的指标之间有很强的联系(平均R^2=0.8622)。处理等效突变体和试验密度的策略对突变体选择的影响可以忽略不计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Empirical Comparison of Mutant Selection Assessment Metrics
Mutation testing is expensive due to the large number of mutants, a problem typically tackled using selective techniques, thereby raising the fundamental question of how to evaluate the selection process. Existing mutant selection approaches rely on one of two types of metrics (or assessment criteria), one based on adequate test sets and the other based on inadequate test sets. This raises the question as to whether these two metrics are correlated, complementary or substitutable for one another. The tester's faith in mutant selection as well as the validity of previous research work using only one metric rely on the answer to this question, yet it currently remains unanswered. To answer it, we perform qualitative and quantitative comparisons with 104 different projects, consisting of over 600,000 lines of code. Our results indicate a strong connection between the two types of metrics (R^2=0.8622 on average). The strategy for dealing with equivalent mutants and test density is observed to have a negligible impact for mutant selection.
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