A comparison of spatial predictors when datasets could be very large
Author(s) -
Jonathan R. Bradley,
Noel Cressie,
Tao Shi
Publication year - 2016
Publication title -
statistics surveys
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.358
H-Index - 23
ISSN - 1935-7516
DOI - 10.1214/16-ss115
Subject(s) - kriging , variogram , weighting , computer science , data mining , spatial analysis , smoothing , exponential smoothing , econometrics , statistics , mathematics , algorithm , machine learning , medicine , radiology
In this article, we review and compare a number of methods of spatial prediction. To demonstrate the breadth of available choices, we consider both traditional and more-recently-introduced spatial predictors. Specifically, in our exposition we review: traditional stationary kriging, smoothing splines, negative-exponential distance-weighting, Fixed Rank Kriging, modified predictive processes, a stochastic partial differential equation approach, and lattice kriging. This comparison is meant to provide a service to practitioners wishing to decide between spatial predictors. Hence, we provide technical material for the unfamiliar, which includes the definition and motivation for each (deterministic and stochastic) spatial predictor. We use a benchmark dataset of $\mathrm{CO}_{2}$ data from NASA's AIRS instrument to address computational efficiencies that include CPU time and memory usage. Furthermore, the predictive performance of each spatial predictor is assessed empirically using a hold-out subset of the AIRS data.
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