非欧几里得响应和预测因子的加性回归

Jeong Min Jeon, B. Park, I. Van Keilegom
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引用次数: 10

摘要

加性回归是在一个非常一般的环境中研究的,其中响应和预测都允许是非欧几里得的。响应在一般可分希尔伯特空间中取值,而预测量在一般半度量空间中取值,这涵盖了非常广泛的非标准响应变量和预测量。给出了半度量空间值预测器加性模型估计的一般框架。特别地,给出了在希尔伯特空间和/或黎曼流形中取值的预测器的全部实现细节和相应的理论。讨论了估计量的存在性、反拟合算法的收敛性、收敛速率和估计量的渐近分布。通过两次仿真研究,研究了估计器的有限样本性能。最后,分析了三个涵盖几种类型的非欧几里得数据的数据集,以说明所提出的一般方法的有效性。
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Additive regression for non-Euclidean responses and predictors
Additive regression is studied in a very general setting where both the response and predictors are allowed to be non-Euclidean. The response takes values in a general separable Hilbert space, whereas the predictors take values in general semimetric spaces, which covers a very wide range of nonstandard response variables and predictors. A general framework of estimating additive models is presented for semimetric space-valued predictors. In particular, full details of implementation and the corresponding theory are given for predictors taking values in Hilbert spaces and/or Riemannian manifolds. The existence of the estimators, convergence of a backfitting algorithm, rates of convergence and asymptotic distributions of the estimators are discussed. The finite sample performance of the estimators is investigated by means of two simulation studies. Finally, three data sets covering several types of nonEuclidean data are analyzed to illustrate the usefulness of the proposed general approach.
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