Rochon J, Helms R W
Department of Epidemiology and Biostatistics, University of Western Ontario, London, Canada.
Biometrics. 1989 Mar;45(1):207-18.
A stochastic model is presented for the analysis of incomplete repeated-measures experiments. The general linear model is used to relate the response measures to other variables which are thought to account for inherent variation; an autoregressive moving average (ARMA) time series representation is used to model disturbance terms. Maximum likelihood estimation procedures are considered, and the properties of these estimators are derived. It is concluded that while the assumptions underpinning the ARMA covariance models may be somewhat restrictive, they provide a useful inferential vehicle, particularly in the presence of missing values.
提出了一种用于分析不完全重复测量实验的随机模型。使用一般线性模型将响应测量值与其他被认为可解释固有变异的变量联系起来;使用自回归移动平均(ARMA)时间序列表示法对干扰项进行建模。考虑了最大似然估计程序,并推导了这些估计量的性质。得出的结论是,虽然支撑ARMA协方差模型的假设可能有些限制,但它们提供了一种有用的推断工具,特别是在存在缺失值的情况下。