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A Quality Index Based on Data Depth and Multivariate Rank Tests
348
Citations
16
References
1993
Year
Total Quality ManagementEngineeringQuality MetricData DepthMathematical StatisticQuality EvaluationInformation QualityData ScienceBiostatisticsQuality IndexStatisticsReliabilityMultivariate Rank TestsData QualityStatistical ScienceQuality AssuranceQuality CharacteristicStatistical InferenceMultivariate Analog
Abstract Let F and G be the distribution functions of two given populations on Rp, p ≥ 1. We introduce and study a Parameter Q = Q(F, G), which measures the Overall "outlyingness" of population G relative to population F. The Parameter Q can be defined using any concept of data depth. Its value ranges from 0 to 1, and is .5 when F and G are identical. We show that within the dass of elliptical distributions when G departs from F in location or G has a larger spread, or both, the value of Q dwindles down from .5. Hence Q can be used to detect the loss of accuracy or precision of a manufacturing process, and thus it should serve as an important measure in quality assurance. This in fact is the reason why we refer to Q as a quality index in this article. In addition to studying the properties of Q, we provide an exact rank test for testing Q = .5 vs. Q < .5. This can be viewed as a multivariate analog of Wilcoxon's rank sum test. The tests proposed here have power against location change and scale increase simultaneously. We introduce some estimates of Q and investigate their limiting distributions when F = G. We also consider a version of Q and its estimates, which are defined after correcting the location shift of G. In this case Q is used to measure scale increase only. KEY WORDS: Data depthMultivariate rank testsQuality assuranceQuality index
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