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Improving generalised estimating equations using quadratic inference functions

机译:使用二次推断函数改进广义估计方程

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摘要

Generalised estimating equations enable one to estimate regression parameters consistently in longitudinal data analysis even when the correlation structure is misspecified. However, under such misspecification, the estimator of the regression parameter can be inefficient. In this paper we introduce a method of quadratic inference functions that does not involve direct estimation of the correlation parameter, and that remains,optimal even if the working correlation structure is misspecified. The idea is to represent the inverse of the working correlation matrix by the linear combination of basis matrices, a representation that is valid for the working correlations most commonly used. Both asymptotic theory and simulation show that under misspecified working assumptions these estimators are more efficient than estimators from generalised estimating equations. This approach also provides a chi-squared inference function for testing nested models and a chi-squared regression misspecification test. Furthermore, the test statistic follows a chi-squared distribution asymptotically whether or not the working correlation structure is correctly specified. [References: 22]
机译:广义估计方程使人们能够在纵向数据分析中一致地估计回归参数,即使相关结构指定不正确也是如此。但是,在这种错误指定的情况下,回归参数的估计值可能无效。在本文中,我们介绍了一种二次推理函数的方法,该方法不涉及对相关参数的直接估计,并且即使工作相关结构指定不正确,也可以保持最优。这个想法是通过基本矩阵的线性组合来表示工作相关性矩阵的逆,该表示对最常用的工作相关性有效。渐近理论和仿真都表明,在错误指定的工作假设下,这些估计器比广义估计方程式的估计器更有效。此方法还提供了用于测试嵌套模型的卡方推断函数和卡方回归错误​​指定测试。此外,检验统计量渐近地遵循卡方分布,无论是否正确指定了工作相关结构。 [参考:22]

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