Software performance testing using covering arrays: efficient screening designs with categorical factors

Dean S. Hoskins, C. Colbourn, D. Montgomery
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引用次数: 29

Abstract

Classical Design of Experiment (DOE) techniques have been in use for many years to aid in the performance testing of systems. In particular fractional factorial designs have been used in cases with many numerical factors to reduce the number of experimental runs necessary. For experiments involving categorical factors, this is not the case; experimenters regularly resort to exhaustive (full factorial) experiments. Recently, D-optimal designs have been used to reduce numbers of tests for experiments involving categorical factors because of their flexibility, but not necessarily because they can closely approximate full factorial results. In commonly used statistical packages, the only generic alternative for reduced experiments involving categorical factors is afforded by optimal designs. The extent to which D-optimal designs succeed in estimating exhaustive results has not been evaluated, and it is natural to determine this. An alternative design based on covering arrays may offer a better approximation of full factorial data. Covering arrays are used in software testing for accurate coverage of interactions, while D-optimal and factorial designs measure the amount of interaction. Initial work involved exhaustive generation of designs in order to compare covering arrays and D-optimal designs in approximating full factorial designs. In that setting, covering arrays provided better approximations of full factorial analysis, while ensuring coverage of all small interactions. Here we examine commercially viable covering array and D-optimal design generators to compare designs. Commercial covering array generators, while not as good as exhaustively generated designs, remain competitive with D-optimal design generators.
使用覆盖阵列的软件性能测试:具有分类因素的有效筛选设计
经典实验设计(DOE)技术已被用于系统性能测试多年。特别是,分数因子设计已用于具有许多数值因子的情况,以减少必要的实验运行次数。对于涉及分类因素的实验,情况并非如此;实验者经常求助于穷举(全因子)实验。最近,d -最优设计已被用于减少涉及分类因素的实验的测试数量,因为它们的灵活性,但不一定是因为它们可以接近全因子结果。在常用的统计软件包中,涉及分类因素的简化实验的唯一通用替代方案是最佳设计。d -最优设计成功估计穷尽结果的程度尚未得到评估,确定这一点是很自然的。另一种基于覆盖数组的设计可以更好地近似全阶乘数据。覆盖数组在软件测试中用于准确覆盖交互,而d -最优和因子设计测量交互的数量。最初的工作涉及穷尽生成设计,以便在近似全因子设计中比较覆盖阵列和d -最优设计。在这种情况下,覆盖数组提供了更好的近似全因子分析,同时确保覆盖所有小的相互作用。在这里,我们检查商业上可行的覆盖阵列和d -最优设计发生器来比较设计。商业覆盖阵列发电机,虽然没有用尽生成的设计好,但仍然与d -最优设计发电机竞争。
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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