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首页> 外文期刊>Annals of the Institute of Statistical Mathematics >Nonparametric check for partial linear errors-in-covariables models with validation data
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Nonparametric check for partial linear errors-in-covariables models with validation data

机译:使用验证数据对协变量的部分线性误差模型进行非参数检查

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摘要

In this paper, we investigate the goodness-of-fit test of partial linear regression models when the true variable in the linear part is not observable but the surrogate variable , the variable in the non-linear part and the response are exactly measured. In addition, an independent validation data set for is available. By a transformation, it is found that we only need to check whether the linear model is plausible or not. We estimate the conditional expectation of under a given the surrogate variable with the help of the validation sample. Finally, a residual-based empirical test for the partial linear models is constructed. A nonparametric Monte Carlo test procedure is used, and the null distribution can be well approximated even when data are from alternative models converging to the hypothetical model. Simulation results show that the proposed method works well.
机译:在本文中,我们研究了部分线性回归模型的拟合优度检验,当线性部分中的真实变量不可观察,但替代变量,非线性部分中的变量和响应被精确测量时,则进行了拟合。此外,还有一个独立的验证数据集。通过转换,发现我们只需要检查线性模型是否合理。在验证样本的帮助下,我们估计了给定替代变量下的条件期望值。最后,针对部分线性模型构建了基于残差的经验检验。使用非参数蒙特卡罗检验程序,即使数据来自替代模型并收敛到假设模型,也可以很好地近似零分布。仿真结果表明,该方法是可行的。

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