A frequency domain empirical likelihood method for irregularly spaced spatial data
Soutir Bandyopadhyay, Soumendra N. Lahiri, Daniel J. Nordman

TL;DR
This paper introduces a novel frequency domain empirical likelihood method tailored for irregularly spaced spatial data, enabling nonparametric inference without explicit variance estimation.
Contribution
It formulates a spatial FDEL that accounts for irregular spacing and bias, establishing asymptotic chi-squared distribution for inference on spectral parameters.
Findings
Wilks' phenomenon holds for the proposed statistic
Method provides asymptotically correct confidence regions
Numerical results demonstrate good finite sample performance
Abstract
This paper develops empirical likelihood methodology for irregularly spaced spatial data in the frequency domain. Unlike the frequency domain empirical likelihood (FDEL) methodology for time series (on a regular grid), the formulation of the spatial FDEL needs special care due to lack of the usual orthogonality properties of the discrete Fourier transform for irregularly spaced data and due to presence of nontrivial bias in the periodogram under different spatial asymptotic structures. A spatial FDEL is formulated in the paper taking into account the effects of these factors. The main results of the paper show that Wilks' phenomenon holds for a scaled version of the logarithm of the proposed empirical likelihood ratio statistic in the sense that it is asymptotically distribution-free and has a chi-squared limit. As a result, the proposed spatial FDEL method can be used to build…
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