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Adaptive quadratic functional estimation of a weighted density by model selection

机译:通过模型选择对加权密度进行自适应二次函数估计

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摘要

We consider the problem of estimating the integral of the square of a probability density function f on the basis of a random sample from a weighted distribution. Specifically, using model selection via a penalized criterion, an adaptive estimator for ∫ f~2 based on weighted data is proposed for probability density functions which are uniformly bounded and belong to certain Besov bodies. We show that the proposed estimator attains the minimax rate of convergence that is optimal in the case of direct data. Additionally, we obtain the information bound for the problem of estimating ∫ f~2 when weighted data are available and compare it with the information bound for the case of direct data. A small simulation study is conducted to illustrate the usefulness of the proposed estimator in finite sample situations.
机译:我们考虑基于来自加权分布的随机样本来估计概率密度函数f的平方的积分的问题。具体地,使用基于惩罚标准的模型选择,针对均匀有界且属于某些贝索夫体的概率密度函数,提出了基于加权数据的针对∫f〜2的自适应估计器。我们表明,提出的估计器达到了最小直接收敛速率,这在直接数据的情况下是最佳的。另外,当加权数据可用时,我们获得了有关估计∫f〜2的问题的信息,并将其与直接数据情况下的信息进行了比较。进行了一次小型模拟研究,以说明拟议的估计器在有限样本情况下的有用性。

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