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The ART of Divide and Conquer An Innovative Approach to Improving the Efficiency of Adaptive Random Testing

机译:分裂艺术,征服一种提高自适应随机检测效率的创新方法

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Test case selection is a prime process in the engineering of test harnesses. In particular, test case diversity is an important concept. In order to achieve an even spread of test cases across the input domain, Adaptive Random Testing (ART) was proposed such that the history of previously executed test cases are taken into consideration when selecting the next test case. This was achieved through various means such as best candidate selection, exclusion, partitioning, and diversity metrics. Empirical studies showed that ART algorithms make good use of the concept of even spreading and achieve 40 to 50% improvement in test effectiveness over random testing in revealing the first failure, which is close to the theoretical limit. However, the computational complexity of ART algorithms may be quadratic or higher, and hence efficiency is an issue when a large number of previously executed test cases are involved. This paper proposes an innovative divide-and-conquer approach to improve the efficiency of ART algorithms while maintaining their performance in effectiveness. Simulation studies have been conducted to gauge its efficiency against two most commonly used ART algorithms, namely, fixed size candidate set and restricted random testing. Initial experimental results show that the divide-and-conquer technique can provide much better efficiency while maintaining similar, or even better, effectiveness.
机译:测试案例选择是测试线束工程中的主要过程。特别是,测试案例多样性是一个重要的概念。为了在输入域中达到测试用例的均匀传播,提出了自适应随机测试(ART),使得在选择下一个测试用例时考虑先前执行的测试用例的历史。这是通过各种手段实现的,例如最佳候选选择,排除,分区和分集度量。实证研究表明,艺术算法良好地利用甚至传播的概念,在揭示第一次故障时,在随机测试中实现了40%至50%的改善,在揭示第一个失败,这接近理论极限。然而,艺术算法的计算复杂性可以是二次或更高的,因此效率是当涉及大量先前执行的测试用例时的问题。本文提出了一种创新的鸿沟和征服方法来提高艺术算法效率,同时保持其性能。已经进行了仿真研究以衡量其对两个最常用的艺术算法的效率,即固定尺寸候选集和受限的随机测试。初始实验结果表明,除法和征服技术可以提供更好的效率,同时保持相似,甚至更好,有效。

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