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On the accuracy of fixed sample and fixed width confidence intervals based on the vertically weighted average

机译:基于垂直加权平均值的固定采样和固定宽度置信区间隔的精度

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摘要

Vertically weighted averages perform a bilateral filtering of data, in order to preserve fine details of the underlying signal, especially discontinuities such as jumps (in one dimension) or edges (in two dimensions). In homogeneous regions of the domain the procedure smoothes the data by averaging nearby data points to reduce the noise, whereas in inhomogeneous regions the neighboring points are only taken into account when their value is close to the current one. This results in a denoised reconstruction or estimate of the true signal without blurring finer details. This article addresses the lack of results about the construction and evaluation of confidence intervals based on the vertically weighted average, which is required for a proper statistical evaluation of its estimation accuracy. Based on recent results we discuss and investigate in greater detail fixed sample and fixed width (conditional) confidence intervals constructed from this estimator. The fixed width approach allows to specify explicitly the estimator's accuracy and determines a random sample size to ensure the required coverage probability. This also fixes to some extent the inherent property of the vertically weighted average that its variability is higher in low-density regions than in high-density regions. To estimate the variances required to construct the procedures, we rely on resampling techniques, especially the bootstrap and the jackknife. Extensive Monte Carlo simulations show that, in general, the proposed confidence intervals are highly reliable in terms of their coverage probabilities for a wide range of parameter settings. The performance can be further increased by the bootstrap.
机译:垂直加权平均值执行数据的双侧滤波,以便保留底层信号的细节,尤其是跳跃(在一个尺寸)或边缘(在两个维度中)的不连续性。在域的同质区域中,过程通过平均附近的数据点平均降低噪声来平滑数据,而在不均匀区域中,当它们的值接近当前时,距离相邻点仅考虑相邻点。这导致对真实信号的去噪或估计而没有模糊细节。本文涉及基于垂直加权平均值缺乏关于施工间隔的施工和评估的结果,这是对其估计准确性的适当统计评估所必需的。基于最近的结果,我们更详细地讨论和调查了从该估算器构建的固定样本和固定宽度(条件)置信区间。固定宽度方法允许明确指定估计器的准确性并确定随机样本大小以确保所需的覆盖概率。这也在某种程度上修复了其可变性在低密度区域中的垂直加权平均值的固有特性而不是高密度区域。为了估算构建程序所需的差异,我们依靠重采样技术,尤其是引导和夹克。广泛的蒙特卡罗模拟表明,通常,在各种参数设置方面,所提出的置信区间是高度可靠的。 Bootstrap可以进一步增加性能。

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