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A comparative simulation study of data-driven methods for estimating density level sets

机译:估计密度水平集的数据驱动方法的比较模拟研究

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摘要

Density level sets are mainly estimated using one of three methodologies: plug-in, excess mass, or a hybrid approach. The plug-in methods are based on replacing the unknown density by some nonparametric estimator, usually the kernel one. Thus, the bandwidth selection is a fundamental problem from an applied perspective. Recently, specific selectors for level sets have been proposed. However, if some a priori information about the geometry of the level set is available, then excess mass algorithms can be useful. In this case, the problem of bandwidth selection can be avoided. The third methodology is a hybrid of the others. It assumes a mild geometric restriction on the level set and it requires a pilot nonparametric estimator of the density. One interesting open question concerns the performance of these methods. In this work, existing methods are reviewed, and two new hybrid algorithms are proposed. Their practical behaviour is compared through extensive simulation study.
机译:密度级别集主要使用以下三种方法之一进行估算:插件,多余质量或混合方法。插件方法基于一些非参数估计器(通常是内核估计器)替换未知密度。因此,从应用的角度来看,带宽选择是一个基本问题。最近,已经提出了用于水平集的特定选择器。但是,如果可以获得有关级别集的几何的先验信息,则多余的质量算法可能会有用。在这种情况下,可以避免带宽选择的问题。第三种方法是其他方法的混合体。它假设在水平集上存在轻微的几何限制,并且需要密度的先导非参数估计量。一个有趣的开放问题涉及这些方法的性能。在这项工作中,对现有方法进行了回顾,并提出了两种新的混合算法。通过广泛的仿真研究比较了它们的实际行为。

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