Nonparametric regression on Lie groups with measurement errors

Jeong Min Jeon, B. Park, I. Van Keilegom
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引用次数: 2

Abstract

This paper develops a foundation of methodology and theory for nonparametric regression with Lie group-valued predictors contaminated by measurement errors. Our methodology and theory are based on harmonic analysis on Lie groups, which is largely unknown in statistics. We establish a novel deconvolution regression estimator, and study its rate of convergence and asymptotic distribution. We also provide asymptotic confidence intervals based on the asymptotic distribution of the estimator and on the empirical likelihood technique. Several theoretical properties are also studied for a deconvolution density estimator, which is necessary to construct our regression estimator. The case of unknown measurement error distribution is also cov-ered. We present practical details on implementation as well as the results of simulation studies for several Lie groups. A real data example is also provided.
具有测量误差的李群的非参数回归
本文发展了李群值预测因子受测量误差影响的非参数回归的方法和理论基础。我们的方法和理论是基于李群的谐波分析,这在很大程度上是未知的统计。建立了一种新的反卷积回归估计量,研究了其收敛速度和渐近分布。我们还提供了基于估计量的渐近分布和经验似然技术的渐近置信区间。研究了反褶积密度估计量的几个理论性质,这是构造回归估计量所必需的。文中还讨论了测量误差分布未知的情况。我们给出了实现的实际细节以及几个李群的模拟研究结果。最后给出了一个实际的数据示例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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