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首页> 外文期刊>Journal of nonparametric statistics >Nonparametric estimation of a surrogate density function in infinite-dimensional spaces
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Nonparametric estimation of a surrogate density function in infinite-dimensional spaces

机译:无限维空间中替代密度函数的非参数估计

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摘要

A density function is generally not well defined in functional data context, but we can define a surrogate of a probability density, also called pseudo-density, when the small ball probability can be approximated by the product of two independent functions, one depending only on the centre of the ball. The aim of this paper is to study two kernel methods for estimating a surrogate probability density for functional data. We present asymptotic properties of these estimators: the convergence in probability and their rates. Simulations are given, including a functional version of smoother bootstrap selection of the parameters of the estimate.
机译:通常在功能数据上下文中没有很好地定义密度函数,但是当小球概率可以由两个独立函数的乘积近似时,我们可以定义概率密度的替代,也称为伪密度。球的中心。本文的目的是研究估计函数数据替代概率密度的两种核方法。我们介绍了这些估计量的渐近性质:概率及其比率的收敛性。给出了仿真,包括估计参数的更平滑引导程序选择的功能版本。

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