Robust Maximum Lq-Likelihood Covariance Estimation for Replicated Spatial Data
Abstract
Parameter estimation with the maximum Lq-likelihood estimator (MLqE) is an alternative to the maximum likelihood estimator (MLE) that considers the q-th power of the likelihood values for some q<1. In this method, extreme values are down-weighted because of their lower likelihood values, which yields robust estimates. In this work, we study the properties of the MLqE for spatial data with replicates. We investigate the asymptotic properties of the MLqE for Gaussian random fields with a Mat\'ern covariance function, and carry out simulation studies to investigate the numerical performance of the MLqE. We show that it can provide more robust and stable estimation results when some of the replicates in the spatial data contain outliers. In addition, we develop a mechanism to find the optimal choice of the hyper-parameter q for the MLqE. The robustness of our approach is further verified on a United States precipitation dataset. Compared with other robust methods for spatial data, our proposal is more intuitive and easier to understand, yet it performs well when dealing with datasets containing outliers.
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