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Nonparametric Functional Central Limit Theorem for Time Series Regression with Application to Self-normalized Confidence Interval

机译:时间序列回归的非参数泛函中心极限定理及其在自标准化置信区间中的应用

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摘要

This paper is concerned with the inference of nonparametric mean function in a time series context. The commonly used kernel smoothing estimate is asymptotically normal and the traditional inference procedure then consistently estimates the asymptotic variance function and relies upon normal approximation. Consistent estimation of the asymptotic variance function involves another level of nonparametric smoothing. In practice, the choice of the extra bandwidth parameter can be difficult, the inference results can be sensitive to bandwidth selection and the normal approximation can be quite unsatisfactory in small samples leading to poor coverage. To alleviate the problem, we propose to extend the recently developed self-normalized approach, which is a bandwidth free inference procedure developed for parametric inference, to construct point-wise confidence interval for nonparametric mean function. To justify asymptotic validity of the self-normalized approach, we establish a functional central limit theorem for recursive nonparametric mean regression function estimates under primitive conditions and show that the limiting process is a Gaussian process with non-stationary and dependent increments. The superior finite sample performance of the new approach is demonstrated through simulation studies.
机译:本文关注时间序列上下文中非参数均值函数的推论。常用的核平滑估计是渐近正态的,然后传统的推理过程会一致地估计渐近方差函数并依赖于正态近似。渐近方差函数的一致估计涉及另一个级别的非参数平滑。在实践中,额外带宽参数的选择可能很困难,推断结果可能对带宽选择很敏感,小样本中的法线逼近可能无法令人满意,从而导致覆盖范围较差。为了缓解该问题,我们建议扩展最近开发的自归一化方法,该方法是为参数推断开发的无带宽推断程序,以构造非参数均值函数的逐点置信区间。为了证明自归一化方法的渐近有效性,我们为原始条件下的递归非参数均值回归函数估计建立了函数中心极限定理,并证明了极限过程是具有非平稳增量和从属增量的高斯过程。通过仿真研究证明了这种新方法的出色的有限样本性能。

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