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The Bagged Median and the Bragged Mean

机译:袋装中位数和袋装均值

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摘要

Bagging (bootstrap aggregating) is a procedure that aims at reducing the prediction error of a classifier or the mean square error of an estimate by averaging its values across bootstrap samples. We illustrate some of the effects of bagging on point estimation using only averages and medians. Our examples show that when we compute the bagged version of a robust estimate, the size of the bootstrap samples can be viewed as a tuning constant that controls the trade-off between efficiency and robustness. To quantify the robustness properties of bagged estimates we introduce a new concept of breakdown point that is useful in situations when resampling is needed. Finally, a robust version of bagging applied to the average leads to generalizations of previous results about the Hodges-Lehmann estimate.
机译:套袋(bootstrap聚合)是一种旨在通过对bootstrap样本的值进行平均来减少分类器的预测误差或估计值的均方误差的过程。我们仅使用平均值和中位数说明套袋对点估计的一些影响。我们的示例表明,当我们计算鲁棒估计的袋装版本时,引导程序样本的大小可以视为控制效率和鲁棒性之间权衡的调整常数。为了量化袋装估计的鲁棒性,我们引入了一个新的击穿点概念,该概念在需要重新采样的情况下很有用。最后,将套袋的稳健版本应用于平均值会导致关于Hodges-Lehmann估计的先前结果的概括。

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