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基于威沙特分布的多元测量误差改进建模。

Improved modeling of multivariate measurement errors based on the Wishart distribution.

作者信息

Wentzell Peter D, Cleary Cody S, Kompany-Zareh M

机构信息

Trace Analysis Research Centre, Department of Chemistry, Dalhousie University, PO Box 15000, Halifax, NS B3H 4R2, Canada.

Trace Analysis Research Centre, Department of Chemistry, Dalhousie University, PO Box 15000, Halifax, NS B3H 4R2, Canada.

出版信息

Anal Chim Acta. 2017 Mar 22;959:1-14. doi: 10.1016/j.aca.2016.12.009. Epub 2016 Dec 30.

Abstract

The error covariance matrix (ECM) is an important tool for characterizing the errors from multivariate measurements, representing both the variance and covariance in the errors across multiple channels. Such information is useful in understanding and minimizing sources of experimental error and in the selection of optimal data analysis procedures. Experimental ECMs, normally obtained through replication, are inherently noisy, inconvenient to obtain, and offer limited interpretability. Significant advantages can be realized by building a model for the ECM based on established error types. Such models are less noisy, reduce the need for replication, mitigate mathematical complications such as matrix singularity, and provide greater insights. While the fitting of ECM models using least squares has been previously proposed, the present work establishes that fitting based on the Wishart distribution offers a much better approach. Simulation studies show that the Wishart method results in parameter estimates with a smaller variance and also facilitates the statistical testing of alternative models using a parameterized bootstrap method. The new approach is applied to fluorescence emission data to establish the acceptability of various models containing error terms related to offset, multiplicative offset, shot noise and uniform independent noise. The implications of the number of replicates, as well as single vs. multiple replicate sets are also described.

摘要

误差协方差矩阵(ECM)是表征多元测量误差的重要工具,它表示多个通道误差中的方差和协方差。此类信息有助于理解和最小化实验误差来源,并有助于选择最佳数据分析程序。实验性ECM通常通过重复测量获得,本质上存在噪声,获取不便,且解释性有限。通过基于既定误差类型构建ECM模型,可以实现显著优势。此类模型噪声较小,减少了重复测量的需求,减轻了诸如矩阵奇异性等数学复杂性,并提供了更深入的见解。虽然之前已提出使用最小二乘法拟合ECM模型,但本研究表明基于威沙特分布的拟合提供了一种更好的方法。模拟研究表明,威沙特方法得到的参数估计方差较小,并且还便于使用参数化自助法对替代模型进行统计检验。将新方法应用于荧光发射数据,以确定包含与偏移、乘性偏移、散粒噪声和均匀独立噪声相关误差项的各种模型的可接受性。还描述了重复测量次数以及单组与多组重复测量的影响。

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