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首页> 外文期刊>Statistica Sinica >CALIBRATED PERCENTILE DOUBLE BOOTSTRAP FOR ROBUST LINEAR REGRESSION INFERENCE
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CALIBRATED PERCENTILE DOUBLE BOOTSTRAP FOR ROBUST LINEAR REGRESSION INFERENCE

机译:校准百分位双向自动启动,用于鲁棒线性回归推理

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摘要

We consider inference for the parameters of a linear model when the covariates are random and the relationship between response and covariates is possibly non-linear. Conventional inference methods such as z intervals perform poorly in these cases. We propose a double bootstrap-based calibrated percentile method, perc-cal, as a general-purpose CI method which performs very well relative to alternative methods in challenging situations such as these. The superior performance of perc-cal is demonstrated by a thorough, full-factorial design synthetic data study as well as a data example involving the length of criminal sentences. We also provide theoretical justification for the perc-cal method under mild conditions. The method is implemented in the R package 'perccal', available through CRAN and coded primarily in C++, to make it easier for practitioners to use.
机译:当协变量是随机的时,我们考虑对线性模型的参数的推断,响应和协变者之间的关系可能是非线性的。 诸如z间隔的传统推理方法在这些情况下表现不佳。 我们提出了一种基于双重引导的校准百分位方法,PERC-CAR作为通用CI方法,其相对于诸如具有挑战性的方法中的替代方法进行非常良好。 Perc-Cal的卓越性能是通过彻底,全面的设计合成数据研究来证明的,以及涉及刑事判决的长度的数据示例。 我们还为温和条件下提供了PERC-CAL方法的理论理由。 该方法在R包'PELCCAL'中实现,可通过CRAN可用,主要在C ++中编码,以使从业者更容易使用。

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