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Efficient Semiparametric Marginal Estimation for the Partially Linear Additive Model for Longitudinal/Clustered Data

机译:纵向/集群数据部分线性加法模型的有效半参数边际估计

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摘要

We consider the efficient estimation of a regression parameter in a partially linear additive nonparametric regression model from repeated measures data when the covariates are multivariate. To date, while there is some literature in the scalar covariate case, the problem has not been addressed in the multivariate additive model case. Ours represents a first contribution in this direction. As part of this work, we first describe the behavior of nonparametric estimators for additive models with repeated measures when the underlying model is not additive. These results are critical when one considers variants of the basic additive model. We apply them to the partially linear additive repeated-measures model, deriving an explicit consistent estimator of the parametric component; if the errors are in addition Gaussian, the estimator is semiparametric efficient. We also apply our basic methods to a unique testing problem that arises in genetic epidemiology; in combination with a projection argument we develop an efficient and easily computed testing scheme. Simulations and an empirical example from nutritional epidemiology illustrate our methods.
机译:当协变量是多变量时,我们考虑根据重复测量数据对部分线性加性非参数回归模型中的回归参数进行有效估计。迄今为止,尽管在标量协变量案例中有一些文献,但在多元加性模型案例中尚未解决该问题。我们的代表在这个方向上的第一项贡献。作为这项工作的一部分,我们首先描述当基础模型不是可加的时,具有重复度量的可加模型的非参数估计量的行为。当考虑基本加性模型的变体时,这些结果至关重要。我们将它们应用于部分线性加法重复测量模型,从而得出参数分量的显式一致估计量。如果误差是高斯误差,则估计量是半参数有效的。我们还将基本方法应用于遗传流行病学中出现的独特测试问题。结合投影论证,我们开发了一种高效且易于计算的测试方案。营养流行病学的模拟和经验示例说明了我们的方法。

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