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Model checking in regression via dimension reduction

机译:通过降维进行回归中的模型检查

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Lack-of-fit checking for parametric and semiparametric models is essential in reducing misspecification. The efficiency of most existing model-checking methods drops rapidly as the dimension of the covariates increases. We propose to check a model by projecting the fitted residuals along a direction that adapts to the systematic departure of the residuals from the desired pattern. Consistency of the method is proved for parametric and semiparametric regression models. A bootstrap implementation is also discussed. Simulation comparisons with several existing methods are made, suggesting that the proposed methods are more efficient than the existing methods when the dimension increases. Air pollution data from Chicago are used to illustrate the procedure.
机译:对参数和半参数模型进行不匹配检查对于减少误指定至关重要。大多数现有模型检查方法的效率会随着协变量维数的增加而迅速下降。我们建议通过沿着适合残差与所需模式的系统偏离的方向投影拟合残差来检查模型。证明了该方法在参数和半参数回归模型中的一致性。还讨论了引导程序的实现。与几种现有方法进行了仿真比较,表明当尺寸增加时,所提出的方法比现有方法更有效。来自芝加哥的空气污染数据用于说明该过程。

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