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Sharp adaptive estimation of quadratic functionals

机译:二次函数的快速自适应估计

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Estimation of a quadratic functional of a function observed in the Gaussian white noise model is considered. A data-dependent method for choosing the amount of smoothing is given. The method is based on comparing certain quadratic estimators with each other. It is shown that the method is asymptotically sharp or nearly sharp adaptive simultaneously for the "regular" and "irregular" region. We consider l(p) bodies and construct bounds for the risk of the estimator which show that for p=4 the estimator is exactly optimal and for example when p is an element of [3,100], then the upper bound is at most 1.055 times larger than the lower bound. We show the connection of the estimator to the theory of optimal recovery. The estimator is a calibration of an estimator which is nearly minimax optimal among quadratic estimators.
机译:考虑在高斯白噪声模型中观察到的函数的二次函数估计。给出了一种用于选择平滑量的数据相关方法。该方法基于相互比较某些二次估计量。结果表明,该方法对于“规则”和“不规则”区域同时渐近地或接近于尖锐地自适应。我们考虑了l(p)个物体,并构造了估计量风险的界线,这表明对于p = 4来说,估计量恰好是最优的,例如,当p是[3,100]的元素时,上限最多为1.055倍大于下限。我们展示了估计量与最佳回收率理论的联系。估计器是对估计器的校准,该估计器在二次估计器中几乎是最小最大最优的。

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