Properties and comparison of some Kriging sub-model aggregation methods

  • Bachoc, François
  • Durrande, Nicolas
  • Rullière, Didier
  • Chevalier, Clément
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Publication date
July 2022
Publisher
Springer Verlag

Abstract

International audienceKriging is a widely employed technique, in particular for computer experiments, in machine learning or in geostatistics. An important challenge for Kriging is the computational burden when the data set is large. This article focuses on a class of methods aiming at decreasing this computational cost, consisting in aggregating Kriging predictors based on smaller data subsets. It proves that aggregation methods that ignore the covariancebetween sub-models can yield an inconsistent final Kriging prediction. In contrast, a theoretical study of the nested Kriging method shows additional attractive properties for it: First, this predictor is consistent, second it can be interpreted as an exact conditional distribution for a m...

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