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Linear Increments with Non-monotone Missing Data and Measurement Error

机译:具有非单调丢失数据和测量误差的线性增量

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Linear increments (LI) are used to analyse repeated outcome data with missing values. Previously, two LI methods have been proposed, one allowing non-monotone missingness but not independent measurement error and one allowing independent measurement error but only monotone missingness. In both, it was suggested that the expected increment could depend on current outcome. We show that LI can allow non-monotone missingness and either independent measurement error of unknown variance or dependence of expected increment on current outcome but not both. A popular alternative to LI is a multivariate normal model ignoring the missingness pattern. This gives consistent estimation when data are normally distributed and missing at random (MAR). We clarify the relation between MAR and the assumptions of LI and show that for continuous outcomes multivariate normal estimators are also consistent under (non-MAR and non-normal) assumptions not much stronger than those of LI. Moreover, when missingness is non-monotone, they are typically more efficient.
机译:线性增量(LI)用于分析缺少值的重复结果数据。先前,已经提出了两种LI方法,一种允许非单调缺失但不能独立的测量误差,一种允许独立的测量误差而仅单调缺失的方法。两者都建议预期的增量可能取决于当前的结果。我们表明,LI可以允许非单调缺失以及未知方差的独立测量误差或预期增量对当前结果的依赖性,但不能两者兼而有之。 LI的一种流行替代方法是忽略缺失模式的多元正态模型。当数据呈正态分布且随机(MAR)丢失时,这将提供一致的估计。我们阐明了MAR与LI假设之间的关系,并表明对于连续结果,在(非MAR和非正态)假设下,多元正态估计量也是一致的,但假设不比LI强。此外,当缺失为非单调时,它们通常会更有效。

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