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Sparse Bayesian Regression with Integrated Feature Selection for Nuclear Reactor Analysis...

by Kenneth J Dayman, Brian J Ade, Charles F Weber
Publication Type
Conference Paper
Publication Date
Conference Name
M&C 2017 International Conference on Mathematics & Computational Methods Applied to Nuclear Science and Engineering
Conference Location
Jeju, South Korea
Conference Date
-

High-dimensional, nonlinear function estimation using large datasets is a current area of interest in the machine learning community, and applications may be found throughout the analytical sciences, where ever-growing datasets are making more information available to the analyst. In this paper, we leverage the existing relevance vector machine, a sparse Bayesian version of the well-studied support vector machine, and expand the method to include integrated feature selection and automatic function shaping. These innovations produce an algorithm that is able to distinguish variables that are useful for making predictions of a response from variables that are unrelated or confusing. We test the technology using synthetic data, conduct initial performance studies, and develop a model capable of making position-independent predictions of the coreaveraged burnup using a single specimen drawn randomly from a nuclear reactor core.