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Robust descriptive discriminant analysis for repeated measures data

机译:重复测量数据的鲁棒性描述判别分析

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Discriminant analysis (DA) procedures based on parsimonious mean and/or covariance structures have recently been proposed for repeated measures data. However, these procedures rest on the assumption of a multivariate normal distribution. This study examines repeated measures DA (RMDA) procedures based on maximum likelihood (ML) and coordinatewise trimming (CT) estimation methods and investigates bias and root mean square error (RMSE) in discriminant function coefficients (DFCs) using Monte Carlo techniques. Study parameters include population distribution, covariance structure, sample size, mean configuration, and number of repeated measurements. The results show that for ML estimation, bias in DFC estimates was usually largest when the data were normally distributed, but there was no consistent trend in RMSE. For non-normal distributions, the average bias of CT estimates for procedures that assume unstructured group means and structured covariances was at least 40% smaller than the values for corresponding procedures based on ML estimators. The average RMSE for the former procedures was at least 10% smaller than the average RMSE for the latter procedures, but only when the data were sampled from extremely skewed or heavy-tailed distributions. This finding was observed even when the covariance and mean structures of the RMDA procedure were mis-specified. The proposed robust procedures can be used to identify measurement occasions that make the largest contribution to group separation when the data are sampled from multivariate skewed or heavy-tailed distributions.
机译:最近,针对重复测量数据,提出了基于简约均值和/或协方差结构的判别分析(DA)程序。但是,这些过程基于多元正态分布的假设。这项研究基于最大似然(ML)和坐标修整(CT)估计方法研究了重复测量DA(RMDA)程序,并使用蒙特卡洛技术研究了判别函数系数(DFC)中的偏差和均方根误差(RMSE)。研究参数包括总体分布,协方差结构,样本量,平均配置和重复测量的次数。结果表明,对于ML估计,当数据呈正态分布时,DFC估计中的偏差通常最大,但是RMSE中没有一致的趋势。对于非正态分布,假定非结构化群组均值和结构化协方差的程序的CT估计平均偏差至少比基于ML估计量的相应程序的值小40%。前一种方法的平均RMSE至少比后一种方法的平均RMSE小10%,但前提是数据是从非常偏斜或重尾的分布中取样的。即使错误指定了RMDA程序的协方差和均值结构,也可以观察到这一发现。当从多元偏斜分布或重尾分布中采样数据时,所提出的鲁棒程序可用于识别对组分离做出最大贡献的测量场合。

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