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Tests of homogeneity of means and covariance matrices for multivariate incomplete data

机译:多元不完整数据的均值和协方差矩阵的同质性检验

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摘要

Existing test statistics for assessing whether incomplete data represent a missing completely at random sample from a single population are based on a normal likelihood rationale and effectively test for homogeneity of means and covariances across missing data patterns. The likelihood approach cannot be implemented adequately if a pattern of missing data contains very few subjects. A generalized least squares rationale is used to develop parallel tests that are expected to be more stable in small samples. Three factors were varied for a simulation: number of variables, percent missing completely at random, and sample size. One thousand data sets were simulated for each condition. The generalized least squares test of homogeneity of means performed close to an ideal Type I error rate for most of the conditions. The generalized least squares test of homogeneity of covariance matrices and a combined test performed quite well also.
机译:用于评估不完整数据是否代表单个人群中的随机样本完全缺失的现有检验统计数据基于正常似然原理,并有效地检验了缺失数据模式中均值和协方差的均质性。如果丢失数据的模式包含很少的主题,则无法充分实施似然法。广义最小二乘基本原理用于开发并行测试,预计在小样本中将更稳定。模拟需要改变三个因素:变量数量,随机完全丢失的百分比以及样本量。针对每种条件模拟了1000个数据集。在大多数情况下,均值的均一性的广义最小二乘检验接近理想的I型错误率。协方差矩阵的同质性的广义最小二乘检验和组合检验也执行得很好。

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