2021
DOI: 10.48550/arxiv.2112.12317
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Asymptotic analysis of ML-covariance parameter estimators based on covariance approximations

Abstract: For a zero-mean Gaussian random field with a parametric covariance function, we introduce a new notion of likelihood approximations (termed pseudo-likelihood functions), which complements the covariance tapering approach. Pseudo-likelihood functions are based on direct functional approximations of the presumed covariance function. We show that under accessible conditions on the presumed covariance function and covariance approximations, estimators based on pseudo-likelihood functions preserve consistency and a… Show more

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