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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >Multivariate Locally Weighted Polynomial Fitting and Partial Derivative Estimation
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Multivariate Locally Weighted Polynomial Fitting and Partial Derivative Estimation

机译:多变量局部加权多项式拟合和部分衍生估计

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摘要

Nonparametric regression estimator based on locally weighted least squares fitting has been studied by Fan and Ruppert and Wand. The latter paper also studies, in the univariate case, nonparametric derivative estimators given by a locally weighted polynomial fitting. Compared with traditional kernel estimators, these estimators are often of simpler form and possess some better properties. In this paper, we develop current work on locally weighted regression and generalize locally weighted polynomial fitting to the estimation of partial derivatives in a multivariate regression context. Specifically, for both the regression and partial derivative estimators we prove joint asymptotic normality and derive explicit asymptotic expansions for their conditional bias and conditional convariance matrix (given observations of predictor variables) in each of the two important cases of local linear fit and local quadratic fit.
机译:基于局部加权最小二乘配件的非参数回归估计已经通过风扇和鲁普珀和棒进行了研究。 后一种纸还在单变量的情况下进行研究,非参数衍生物估计由局部加权多项式配件给出。 与传统的内核估计相比,这些估算器通常具有更简单的形式,并具有一些更好的特性。 在本文中,我们在本地加权回归上开发当前工作,并概括了局部加权多项式拟合在多元回归上下文中的部分衍生物的估计。 具体地,对于回归和部分衍生估计器,我们证明了关节渐近常态并导出了其条件偏置和条件普遍矩阵(给定对预测器变量观察)的显式渐近扩展,其中两个重要的局部线性配合和局部二次配合 。

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