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Improving the detection of unusual observations in high-dimensional settings

机译:改进对高维环境中异常观测值的检测

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摘要

Multivariate control charts are used to monitor stochastic processes for changes and unusual observations. Hotelling's T-2 statistic is calculated for each new observation and an out-of-control signal is issued if it goes beyond the control limits. However, this classical approach becomes unreliable as the number of variables p approaches the number of observations n, and impossible when p exceeds n. In this paper, we devise an improvement to the monitoring procedure in high-dimensional settings. We regularise the covariance matrix to estimate the baseline parameter and incorporate a leave-one-out re-sampling approach to estimate the empirical distribution of future observations. An extensive simulation study demonstrates that the new method outperforms the classical Hotelling T-2 approach in power, and maintains appropriate false positive rates. We demonstrate the utility of the method using a set of quality control samples collected to monitor a gas chromatography-mass spectrometry apparatus over a period of 67 days.
机译:多元控制图用于监视随机过程的变化和异常观察。为每个新的观测值计算Hotelling的T-2统计量,如果超出控制范围,则发出失控信号。但是,当变量数量p接近观测值n时,这种经典方法变得不可靠,而当p超过n时,这种经典方法就变得不可行。在本文中,我们对高维设置中的监视过程进行了改进。我们对协方差矩阵进行正则化,以估计基线参数,并采用留一法的重采样方法来估计未来观测值的经验分布。广泛的仿真研究表明,该新方法的性能优于经典的Hotelling T-2方法,并保持适当的误报率。我们展示了该方法的实用性,该方法使用了一组质量控制样品,用于在67天的时间内监测气相色谱-质谱仪。

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