The "Hook and Loop" Resampling Plane

R. Iskander, W. Alkhaldi
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引用次数: 5

Abstract

We propose a new resampling scheme that takes literally the concept of the non-parametric bootstrap in which new samples are generated from the empirical distribution function. The introduced resampling concept is totally heuristic, but already shows promising results when applied to model selection. We show that for a range of linear models, the proposed resampling scheme outperforms the classical model selection techniques as well as its predecessor, the non-parametric bootstrap. It also simplifies the practical problem of choosing residual scaling or the length of the subsample that exists in the traditional bootstrap based model selection approach.
“钩环”重采样平面
我们提出了一种新的重采样方案,它从字面上理解了非参数自举的概念,其中新样本是从经验分布函数中生成的。引入的重采样概念完全是启发式的,但在应用于模型选择时已经显示出令人满意的结果。我们表明,对于一系列线性模型,所提出的重采样方案优于经典模型选择技术及其前身非参数bootstrap。它还简化了传统的基于自举的模型选择方法中存在的残差尺度或子样本长度选择的实际问题。
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