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Inference about the slope in linear regression: an empirical likelihood approach

机译:关于线性回归斜率的推断:经验似然方法

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We present a new, efficient maximum empirical likelihood estimator for the slope in linear regression with independent errors and covariates. The estimator does not require estimation of the influence function, in contrast to other approaches, and is easy to obtain numerically. Our approach can also be used in the model with responses missing at random, for which we recommend a complete case analysis. This suffices thanks to results by Muller and Schick (Bernoulli 23:2693-2719, 2017), which demonstrate that efficiency is preserved. We provide confidence intervals and tests for the slope, based on the limiting Chi-square distribution of the empirical likelihood, and a uniform expansion for the empirical likelihood ratio. The article concludes with a small simulation study.
机译:我们为独立误差和协变量提出了一种新的,高效的最大经验似然估计,用于线性回归中的斜坡。 与其他方法相比,估计器不需要估计影响功能,并且易于在数值上获得。 我们的方法也可以在模型中使用随机缺失的响应,我们建议完全案例分析。 由于Muller和Schick(Bernoulli 23:2693-2719,2017)的结果,这就此表明效率被保留了。 基于经验似然的限制的Chi方形分布,我们为斜坡提供置信区间和测试,以及对经验似然比的均匀扩展。 文章结束了小型模拟研究。

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