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ADAPTATION TO LOWEST DENSITY REGIONS WITH APPLICATION TO SUPPORT RECOVERY

机译:适应最低密度区域并应用于支持恢复

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A scheme for locally adaptive bandwidth selection is proposed which sensitively shrinks the bandwidth of a kernel estimator at lowest density regions such as the support boundary which are unknown to the statistician. In case of a Holder continuous density, this locally minimax-optimal bandwidth is shown to be smaller than the usual rate, even in case of homogeneous smoothness. Some new type of risk bound with respect to a density-dependent standardized loss of this estimator is established. This bound is fully nonasymptotic and allows to deduce convergence rates at lowest density regions that can be substantially faster than n(-1/2). It is complemented by a weighted minimax lower bound which splits into two regimes depending on the value of the density. The new estimator adapts into the second regime, and it is shown that simultaneous adaptation into the fastest regime is not possible in principle as long as the Holder exponent is unknown. Consequences on plug-in rules for support recovery are worked out in detail. In contrast to those with classical density estimators, the plug-in rules based on the new construction are minimax-optimal, up to some logarithmic factor.
机译:提出了一种用于局部自适应带宽选择的方案,该方案灵敏地缩小了核估计器在诸如统计人员未知的最低密度区域(例如,支持边界)处的带宽。在Holder连续密度的情况下,即使在均匀平滑的情况下,该局部最小最大最优带宽也显示小于通常的速率。建立了关于此估计量的依赖密度的标准化损失的某种新型风险约束。该界限是完全非渐近的,可以推论最低密度区域的收敛速度,该速度可能比n(-1/2)快得多。它由加权的maxmax下限补充,该下限根据密度的值分为两个区域。新的估计器适应第二种状态,并且表明,只要不知道Holder指数,原则上就不可能同时适应最快的状态。有关支持恢复的插件规则的后果已得到详细解决。与使用经典密度估计器的规则相比,基于新构造的插件规则是minimax-optimal的,最高可达对数因子。

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