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Frequency Domain Resampling for Gridded Spatial Data

Frequency Domain Resampling for Gridded Spatial Data

来源:Arxiv_logoArxiv
英文摘要

In frequency domain analysis for spatial data, spectral averages based on the periodogram often play an important role in understanding spatial covariance structure, but also have complicated sampling distributions due to complex variances from aggregated periodograms. In order to nonparametrically approximate these sampling distributions for purposes of inference, resampling can be useful, but previous developments in spatial bootstrap have faced challenges in the scope of their validity, specifically due to issues in capturing the complex variances of spatial spectral averages. As a consequence, existing frequency domain bootstraps for spatial data are highly restricted in application to only special processes (e.g. Gaussian) or certain spatial statistics. To address this limitation and to approximate a wide range of spatial spectral averages, we propose a practical hybrid-resampling approach that combines two different resampling techniques in the forms of spatial subsampling and spatial bootstrap. Subsampling helps to capture the variance of spectral averages while bootstrap captures the distributional shape. The hybrid resampling procedure can then accurately quantify uncertainty in spectral inference under mild spatial assumptions. Moreover, compared to the more studied time series setting, this work fills a gap in the theory of subsampling/bootstrap for spatial data regarding spectral average statistics.

Souvick Bera、Daniel J. Nordman、Soutir Bandyopadhyay

测绘学地球物理学

Souvick Bera,Daniel J. Nordman,Soutir Bandyopadhyay.Frequency Domain Resampling for Gridded Spatial Data[EB/OL].(2025-04-27)[2025-06-12].https://arxiv.org/abs/2504.19337.点此复制

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