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点过程和随机场的谱估计

Spectral estimation for point processes and random fields

Biometrika · 2025
被引 2
ABS 4

中文导读

提出一个多窗谱分析框架,结合离散和连续数据锥与离散傅里叶变换,用于点过程和随机场的联合谱分析,并给出快速实现和渐近性质,适用于不规则域和生态数据。

Abstract

Summary Spatial variables can be observed in many different forms, such as regularly sampled random fields (lattice data), point processes and randomly sampled spatial processes. Joint analysis of such collections of observations is clearly desirable, but complicated by the lack of an easily implementable analysis framework. We fill this gap by providing a multitaper analysis framework using coupled discrete and continuous data tapers, combined with the discrete Fourier transform for inference. Using this set of tools is important, as it forms the backbone for practical spectral analysis. In higher dimensions it is especially important not to be constrained to Cartesian product domains, and so we develop the methodology for spectral analysis using irregular domain data tapers and the tapered discrete Fourier transform. We discuss its fast implementation, as well as the asymptotic and large finite-domain properties. Estimators of partial association between different spatial processes are provided, as are principled methods to determine their significance, and we demonstrate their practical utility using a large-scale ecological dataset.

空间统计谱分析点过程随机场多窗谱估计