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A Monte Carlo subsampling method for estimating the distribution of signal-to-noise ratio statistics in nonparametric time series regression models

机译:用于估计非参数时间序列回归模型中信噪比统计分布的蒙特卡罗分布方法

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摘要

Signal-to-noise ratio (SNR) statistics play a central role in many applications. A common situation where SNR is studied is when a continuous time signal is sampled at a fixed frequency with some noise in the background. While estimation methods exist, little is known about its distribution when the noise is not weakly stationary. In this paper we develop a nonparametric method to estimate the distribution of an SNR statistic when the noise belongs to a fairly general class of stochastic processes that encompasses both short and long-range dependence, as well as nonlinearities. The method is based on a combination of smoothing and subsampling techniques. Computations are only operated at the subsample level, and this allows to manage the typical enormous sample size produced by modern data acquisition technologies. We derive asymptotic guarantees for the proposed method, and we show the finite sample performance based on numerical experiments. Finally, we propose an application to electroencephalography data.
机译:信噪比(SNR)统计信息在许多应用中发挥着核心作用。研究了SNR的常见情况是当以固定频率采样连续时间信号,在背景中存在一些噪音。虽然存在估计方法,但是当噪声没有弱静止时,它对其分布很少。在本文中,我们开发了一种非参数方法,以估计当噪声属于包括短路和远程依赖性的相当一般的随机过程的相当一般的随机过程时,估计SNR统计的分布。该方法基于平滑和附带技术的组合。计算仅在子样本级别运行,这允许管理现代数据采集技术产生的典型巨大的样本量。我们为该方法提供了渐近保证,我们展示了基于数值实验的有限样本性能。最后,我们建议应用于脑电图数据数据。

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