A Multi-objective optimization approach for selection of second order mutant generation strategies

Jackson A. Prado Lima, S. Vergilio
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引用次数: 11

Abstract

The use of Higher-Order Mutants (HOMs) presents some advantages concerning the traditional use of First-Order Mutants (FOMs). HOMs can better simulate real and subtle faults, reduce the number of generated mutants and test cases, and so on. However, the HOM space is potentially huge, and an efficient strategy to generate the best HOMs is fundamental. In the literature different strategies were proposed and evaluated, mainly to generate Second-Order Mutants (SOMs), but none has been proved to perform better in different situations. Due to this, the selection of the best strategy is an important task. Most times a lot of experiments need to be conducted. To help the tester in this task and to allow the use of HOMs in practice, this paper proposes a hyper-heuristic approach. Such approach is based on NSGA-II and uses the selection method Choice Function to automatically choose among different Low-Level Heuristics (LLHs), which, in this case, are search-operators related to existing SOM generation strategies. The performance of each LLH is related to some objectives such as the number of SOMs generated, the capacity to capture subtler faults and replace the constituent FOMs. In comparison with existing strategies, our approach obtained better results considering the used objectives, and statistically equivalent results considering mutation score with respect to the FOMs.
二阶突变体生成策略选择的多目标优化方法
与传统的一阶突变体(FOMs)相比,高阶突变体(HOMs)的使用具有一些优势。HOMs可以更好地模拟真实和微妙的故障,减少生成的突变体和测试用例的数量,等等。然而,HOM的潜在空间是巨大的,产生最佳HOM的有效策略是基础。在文献中提出并评估了不同的策略,主要是为了产生二阶突变体(SOMs),但没有一种策略被证明在不同情况下表现更好。因此,选择最佳策略是一项重要的任务。大多数时候需要进行大量的实验。为了帮助测试人员完成这项任务,并允许在实践中使用HOMs,本文提出了一种超启发式方法。该方法基于NSGA-II,使用选择方法Choice Function在不同的低级启发式(Low-Level Heuristics, LLHs)中自动选择,在这种情况下,LLHs是与现有SOM生成策略相关的搜索算子。每个LLH的性能与一些目标有关,例如生成的som的数量、捕获细微故障和替换组成fom的能力。与现有策略相比,考虑使用目标,我们的方法获得了更好的结果,考虑FOMs的突变分数,我们的方法获得了统计上等效的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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