Efficiency Assessment of Approximated Spatial Predictions for Large Datasets
Yiping Hong, Sameh Abdulah, Marc G. Genton, Ying Sun

TL;DR
This paper introduces new criteria for assessing the efficiency of approximate spatial prediction methods, demonstrating their advantages over traditional metrics through simulations and real data applications.
Contribution
It proposes three novel criteria (MLOE, MMOM, RMOM) for better tuning and evaluating approximation methods in large spatial datasets, improving prediction efficiency assessment.
Findings
New criteria are more informative than MSPE and Kullback-Leibler.
Proposed criteria effectively guide tuning parameter selection.
Application to soil moisture data shows practical usefulness.
Abstract
Due to the well-known computational showstopper of the exact Maximum Likelihood Estimation (MLE) for large geospatial observations, a variety of approximation methods have been proposed in the literature, which usually require tuning certain inputs. For example, the recently developed Tile Low-Rank approximation (TLR) method involves many tuning parameters, including numerical accuracy. To properly choose the tuning parameters, it is crucial to adopt a meaningful criterion for the assessment of the prediction efficiency with different inputs, which the most commonly-used Mean Square Prediction Error (MSPE) criterion and the Kullback-Leibler Divergence criterion cannot fully describe. In this paper, we present three other criteria, the Mean Loss of Efficiency (MLOE), Mean Misspecification of the Mean Square Error (MMOM), and Root mean square MOM (RMOM), and show numerically that, in…
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