UCSC-SOE-10-23: Cases for the Nugget in Modeling Computer Experiments

Robert Gramacy, Herbert Lee
07/26/2010 09:00 AM
Applied Mathematics & Statistics
Most surrogate models for computer experiments are interpolators, and the most common interpolator is a Gaussian process (GP) that deliberately omits a small-scale (measurement) error term called the nugget. The explanation is that computer experiments are, by definition, "deterministic", and so there is no measurement error. We think this is too narrow a focus for a computer experiment and a statistically inefficient way to model them. We show that estimating a (non-zero) nugget can lead to surrogate models with better statistical properties, such as predictive accuracy and coverage, in a variety of common situations.

UCSC-SOE-10-23