It is well known that the empirical likelihood ratio confidence region suffers finite sample under-coverage issue, and this severely hampers its application in statistical inferences.} The root cause of this under-coverage is an upper limit imposed by the convex hull of the estimating functions that is used in the construction of the profile empirical likelihood. For i.i.d data, various methods have been proposed to solve this issue by modifying the convex hull, but it is not clear how well these methods perform when the data are no longer independent. In this paper, we propose an adjusted blockwise empirical likelihood that is designed for weakly dependent multivariate data. We show that our method not only preserves the much celebrated asymptotic $\chi^2-$distribution, but also improves the finite sample coverage probability by removing the upper limit imposed by the convex hull. Further, we show that our method is also Bartlett correctable, thus is able to achieve high order asymptotic coverage accuracy.
翻译:众所周知,实证概率信任度区域存在有限的样本覆盖不足问题,这严重妨碍了其在统计推论中的应用。}这一覆盖不足的根本原因是用于构建剖面时所用估计功能的螺旋柱体施加的上限。 关于数据,已提出各种方法通过修改锥形船体来解决这一问题,但不清楚当数据不再独立时,这些方法的效果如何。在本文中,我们提出一个调整后的块状实验概率,用于脆弱依赖性多变量数据。我们表明,我们的方法不仅保存了广为流行的单体值 $\chi ⁇ 2美元分布,而且还通过取消锥形船体设定的上限提高了有限的样本覆盖概率。此外,我们表明,我们的方法也是Bartlett可以纠正的,因此能够实现高顺序的、有症状的覆盖准确性。