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Bayesian optimal design for Gaussian process model

Presented by: 
Maria Adamou University of Southampton
Thursday 8th February 2018 - 16:00 to 17:00
INI Seminar Room 1
Co-author: Dave Woods (University of Southampton)

Data collected from correlated processes arise in many diverse application areas including both computer and physical experiments, and studies in environmental science. Often, such data are used for prediction and optimisation of the process under study. For example, we may wish to construct an emulator of a computationally expensive computer model, or simulator, and then use this emulator to find settings of the controllable variables that maximise the predicted response. The design of the experiment from which the data are collected may strongly influence the quality of the model fit and hence the precision and accuracy of subsequent predictions and decisions. We consider Gaussian process models that are typically defined by a correlation structure that may depend upon unknown parameters. This parametric uncertainty may affect the choice of design points, and ideally should be taken into account when choosing a design. We consider a decision-theoretic Bayesian design for Gaussian process models which is usually computationally challenging as it requires the optimization of an analytically intractable expected loss function over high-dimensional design space. We use a new approximation to the expected loss to find decision-theoretic optimal designs. The resulting designs are illustrated through a number of simple examples.
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University of Cambridge Research Councils UK
    Clay Mathematics Institute London Mathematical Society NM Rothschild and Sons