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Empirical likelihood confidence regions in the single-index model with growing dimensions

机译:具有生长尺寸的单指标模型中的经验似然置信区

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摘要

This paper investigates statistical inference for the single-index model when the number of predictors grows with sample size. Empirical likelihood method for constructing confidence region for the index vector, which does not require a multivariate non parametric smoothing, is employed. However, the classical empirical likelihood ratio for this model does not remain valid because plug-in estimation of an infinite-dimensional nuisance parameter causes a non negligible bias and the diverging number of parameters/predictors makes the limit not chi-squared any more. To solve these problems, we define an empirical likelihood ratio based on newly proposed weighted estimating equations and show that it is asymptotically normal. Also we find that different weights used in the weighted residuals require, for asymptotic normality, different diverging rate of the number of predictors. However, the rate n(1/3), which is a possible fastest rate when there are no any other conditions assumed in the setting under study, is still attainable. A simulation study is carried out to assess the performance of our method.
机译:本文调查单索引模型的统计推断当预测器的数量随着样本大小而增长。采用了用于构造索引向量置信区的经验似然方法,其不需要多变量非参数平滑。然而,该模型的经典实证似然比不保持有效,因为无限维诺斯参数的插件估计导致不可忽略的偏差和发散数量/预测器的发散数量不再使极限不平衡。为了解决这些问题,我们基于新提出的加权估计方程来定义经验似然比,并表明它是渐近正常的。此外,我们发现加权残差中使用的不同重量需要渐近正常性,预测器数量不同的不同分歧率。然而,当在研究中没有在研究中没有任何其他条件时,速率n(1/3)是可能的最快速率,仍然可以获得。进行了仿真研究,以评估我们方法的性能。

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