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首页> 外文期刊>Australian & New Zealand journal of statistics >COVARIATE-ADJUSTED REGRESSION FOR LONGITUDINAL DATA INCORPORATING CORRELATION BETWEEN REPEATED MEASUREMENTS
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COVARIATE-ADJUSTED REGRESSION FOR LONGITUDINAL DATA INCORPORATING CORRELATION BETWEEN REPEATED MEASUREMENTS

机译:重复测量之间的经度调整后的经纬度数据合并相关性

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摘要

We propose an estimation method that incorporates the correlation/covariance structure between repeated measurements in covariate-adjusted regression models for distorted longitudinal data. In this distorted data setting, neither the longitudinal response nor (possibly time-varying) predictors are directly observable. The unobserved response and predictors are assumed to be distorted/contaminated by unknown functions of a common observable confounder. The proposed estimation methodology adjusts for the distortion effects both in estimation of the covariance structure and in the regression parameters using generalized least squares. The finite-sample performance of the proposed estimators is studied numerically by means of simulations. The consistency and convergence rates of the proposed estimators are also established. The proposed method is illustrated with an application to data from a longitudinal study of cognitive and social development in children.
机译:我们提出了一种估计方法,该方法在失真的纵向数据的协变量调整回归模型中的重复测量之间合并了相关/协方差结构。在这种失真的数据设置中,纵向响应和(可能随时间变化的)预测变量都无法直接观察到。假定未观察到的响应和预测变量被常见的可观察混杂因素的未知功能所扭曲/污染。所提出的估计方法使用广义最小二乘法调整协方差结构的估计和回归参数中的失真效果。通过仿真数值研究了所提出估计量的有限样本性能。还建立了拟议估计量的一致性和收敛速度。通过对儿童认知和社会发展的纵向研究中的数据,对所提出的方法进行了说明。

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