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Comparison of Separable Components in Different Samples

机译:不同样品中可分离成分的比较

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摘要

Imagine we have two different samples and are interested in doing semi- or non-parametric regression analysis in each of them, possibly on the same model. In this paper, we consider the problem of testing whether a specific covariate has different impacts on the regression curve in these two samples. We compare the regression curves of different samples but are interested in specific differences instead of testing for equality of the whole regression function. Our procedure does allow for random designs, different sample sizes, different variance functions, different sets of regressors with different impact functions, etc. As we use the marginal integration approach, this method can be applied to any strong, weak or latent separable model as well as to additive interaction models to compare the lower dimensional separable components between the different samples. Thus, in the case of having separable models, our procedure includes the possibility of comparing the whole regression curves, thereby avoiding the curse of dimensionality. It is shown that bootstrap fails in theory and practice. Therefore, we propose a subsampling procedure with automatic choice of subsample size. We present a complete asymptotic theory and an extensive simulation study.
机译:想象一下,我们有两个不同的样本,并且有兴趣对每个样本进行半参数或非参数回归分析,可能是在同一模型上。在本文中,我们考虑了测试特定协变量是否对这两个样本的回归曲线产生不同影响的问题。我们比较不同样本的回归曲线,但对特定差异感兴趣,而不是测试整个回归函数的相等性。我们的程序确实允许随机设计,不同样本量,不同方差函数,具有不同影响函数的不同回归变量集等。由于我们使用边际积分方法,因此该方法可以应用于任何强,弱或潜在可分离模型,例如以及添加交互模型来比较不同样本之间的较低维可分离成分。因此,在具有可分离模型的情况下,我们的过程包括比较整个回归曲线的可能性,从而避免了维数的诅咒。结果表明,引导程序在理论和实践上都失败了。因此,我们提出了一种自动选择子样本大小的子抽样程序。我们提出了完整的渐近理论和广泛的模拟研究。

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