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Consistent Nonparametric Regression for Functional Data Under the Stone–Besicovitch Conditions

机译:Stone-Besicovitch条件下功能数据的一致非参数回归

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摘要

In this paper, we address the problem of nonparametric regression estimation in the infinite-dimensional setting. We start by extending the Stone's seminal result to the case of metric spaces when the probability measure of the explanatory variables is tight. Then, under slight variations on the hypotheses, we state and prove the theorem for general metric measure spaces. From this result, we derive the mean square consistency of the ${bm k}$-NN and kernel estimators if the regression function is bounded and the Besicovitch condition holds. We also prove that, for the uniform kernel estimate, the Besicovitch condition is also necessary in order to attain ${bm L}^{1}$ consistency for almost every ${bm x}$.
机译:在本文中,我们解决了无限维设置中的非参数回归估计问题。当解释变量的概率度量很严格时,我们首先将斯通的开创性结果扩展到度量空间的情况。然后,在假设稍有变化的情况下,我们陈述并证明了一般度量度量空间的定理。根据此结果,如果回归函数有界且Besicovitch条件成立,则可以得出$ {bm k} $-NN和核估计量的均方一致性。我们还证明,对于统一的内核估计,Besicovitch条件对于获得几乎每个$ {bm x} $的$ {bm L} ^ {1} $一致性也是必要的。

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