We develop a multi-level restricted maximum likelihood method for
estimating the covariance function parameters and computing the best
linear unbiased predictor (BLUP). Our approach produces a new set of
multi-level contrasts where the deterministic parameters of the
model is 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 are computed with a
distance criterion. We demonstrate our approach on problems of up
512,000 observations with a Matern covariance function.
Multi-Level Restricted Maximum Likelihood Covariance Estimation and Kriging for Large Non-Gridded Spatial Datasets
31 October 2014
12:00 pm to 1:00 pm
Multi-Level Restricted Maximum Likelihood Covariance Estimation and Kriging for Large Non-Gridded Spatial Datasets
Dr. Julio Castrillon
KAUST