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Improved Test Planning and Analysis Through the Use of Advanced Statistical Methods

机译:通过使用先进的统计方法改善测试规划和分析

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The goal of this work is, through computational simulations, to provide statistically-based evidence to convince the testing community that a distributed testing approach is superior to a clustered testing approach for most situations. For clustered testing, numerous, repeated test points are acquired at a limited number of test conditions. For distributed testing, only one or a few test points are requested at many different conditions. The statistical techniques of Analysis of Variance (ANOVA), Design of Experiments (DOE) and Response Surface Methods (RSM) are applied to enable distributed test planning, data analysis and test augmentation. The D-Optimal class of DOE is used to plan an optimally efficient single- and multi-factor test The resulting simulated test data are analyzed via ANOVA and a parametric model is constructedusing RSM. Finally, ANOVA can be used to plan a second round of testing to augment the existing data set with new data points. The use of these techniques is demonstrated through several illustrative examples. To date, many thousands of comparisons have been performed and the results strongly support the conclusion that the distributed testing approach outperforms the clustered testing approach.
机译:本工作的目标是通过计算模拟,提供基于统计上的证据来说服测试社区,分布式测试方法优于大多数情况的聚类测试方法。对于聚类测试,在有限数量的测试条件下获取许多重复的测试点。对于分布式测试,在许多不同的条件下只要求一个或几个测试点。应用差异分析(ANOVA),实验设计(DOE)和响应表面方法(RSM)的统计技术,以实现分布式测试规划,数据分析和测试增强。 D-OPTEMAL类别的DOE用于规划最佳有效的单个和多因素测试,通过ANOVA分析产生的模拟测试数据,并且参数模型是构造RSM的。最后,ANOVA可用于规划第二轮测试,以增强具有新数据点的现有数据集。通过若干说明性实施例证明了这些技术的使用。迄今为止,已经进行了数千个比较,结果强烈支持分布式测试方法优于聚类测试方法的结论。

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