放大输入域的自适应随机测试

Johannes Mayer, Christoph Schneckenburger
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引用次数: 15

摘要

自适应随机测试(ART)包含了一系列随机测试技术,这些技术被设计为比纯随机测试更有效。这些方法在输入域中比均匀分布更均匀地分布测试用例。在本文中,研究了为什么标准的ART方法在失败率较高时效果较差。因此,用一种新的方法分析由这些方法生成的测试用例的空间分布——也在更高的维度上。根据分析结果,提出了改进算法,如实证研究所示,对所有故障率都同样有效
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Random Testing with Enlarged Input Domain
Adaptive random testing (ART) subsumes a family of random testing techniques that are designed to be more effective than pure random testing. These methods spread test cases more evenly within the input domain than a uniform distribution does. In the present paper, it is investigated why standard ART methods are less effective for higher failure rates. Therefore, the spatial distribution of the test cases generated by these methods is analyzed - also in higher dimensions - with a new approach. Based on the results of the analysis, improved algorithms are proposed that are equally effective for all failure rates as an empirical study reveals
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