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Estimator Selection: a New Method with Applications to Kernel Density Estimation

机译:估计器选择:一种应用于核密度估计的新方法

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摘要

HeadingAbstract/HeadingParaEstimator selection has become a crucial issue in non parametric estimation. Two widely used methods are penalized empirical risk minimization (such as penalized log-likelihood estimation) or pairwise comparison (such as Lepski’s method). Our aim in this paper is twofold. First we explain some general ideas about the calibration issue of estimator selection methods. We review some known results, putting the emphasis on the concept of minimal penalty which is helpful to design data-driven selection criteria. Secondly we present a new method for bandwidth selection within the framework of kernel density density estimation which is in some sense intermediate between these two main methods mentioned above. We provide some theoretical results which lead to some fully data-driven selection strategy./Para
机译: Abstract 估计器的选择已成为非参数估计中的关键问题。两种广泛使用的方法是最小化经验风险最小化(例如,对数似然估计)或成对比较(例如Lepski方法)。本文的目的是双重的。首先,我们解释有关估算器选择方法的校准问题的一些一般性想法。我们回顾了一些已知的结果,重点放在最小罚分的概念上,这有助于设计数据驱动的选择标准。其次,我们提出了一种在内核密度密度估计的框架内进行带宽选择的新方法,该方法在某种意义上介于上述两种主要方法之间。我们提供了一些理论结果,从而得出了一些完全由数据驱动的选择策略。

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