Approximately Optimal Experimental Design for Heteroscedastic Gaussian Process Models

Alexis Boukouvalas, Dan Cornford, Milan Stehlik

Research output: Working paper and reportsResearch report

Abstract

This paper presents a greedy Bayesian experimental design criterion for heteroscedastic Gaussian process models. The criterion is based on the Fisher information and is optimal in the sense of minimizing parameter uncertainty for likelihood based estimators. We demonstrate the validity of the criterion under different noise regimes and present experimental results from a rabies simulator to demonstrate the effectiveness of the resulting approximately optimal designs.
Original languageEnglish
Place of PublicationBirmingham B4 7ET, UK
PublisherNeural Computing Research Group
Number of pages14
Publication statusPublished - Nov 2009

Publication series

NameTechnical Report

Fields of science

  • 101029 Mathematical statistics
  • 101024 Probability theory

JKU Focus areas

  • Computation in Informatics and Mathematics
  • Social and Economic Sciences (in general)

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