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      Multi-Level Restricted Maximum Likelihood Covariance Estimation and Kriging for Large Non-Gridded Spatial Datasets

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          Abstract

          We develop a multi-level restricted Gaussian maximum likelihood method for estimating the covariance function parameters and computing the best unbiased predictor. Our approach produces a new set of multi-level contrasts where the deterministic parameters of the model are filtered out thus enabling the estimation of the covariance parameters to be decoupled from the deterministic component. Moreover, the multi-level covariance matrix of the contrasts exhibit fast decay that is dependent on the smoothness of the covariance function. Due to the fast decay of the multi-level covariance matrix coefficients only a small set is computed with a level dependent criterion. We demonstrate our approach on problems of up to 512,000 observations with a Matern covariance function and highly irregular placements of the observations. In addition, these problems are numerically unstable and hard to solve with traditional methods.

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          Nested Dissection of a Regular Finite Element Mesh

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            Covariance Tapering for Interpolation of Large Spatial Datasets

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              Approximating likelihoods for large spatial data sets

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                Author and article information

                Journal
                2015-04-01
                2016-03-28
                Article
                10.1016/j.spasta.2015.10.006
                1504.00302
                7b918fce-18dc-4cf4-880a-d4ac2f82e6c9

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                Spatial Statistics, Available online 10 November 2015
                stat.CO

                Mathematical modeling & Computation
                Mathematical modeling & Computation

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