Radial basis functions with a priori bias as surrogate models:A comparative study

Volume: 71, Pages: 28 - 44
Published: May 1, 2018
Abstract
Radial basis functions are augmented with a posteriori bias in order to perform robustly when used as metamodels. Recently, it has been proposed that the bias can simply be set a priori by using the normal equation, i.e., the bias becomes the corresponding regression model. In this study, we demonstrate the performance of the suggested approach (RBFpri) with four other well-known metamodeling methods; Kriging, support vector regression, neural...
Paper Details
Title
Radial basis functions with a priori bias as surrogate models:A comparative study
Published Date
May 1, 2018
Volume
71
Pages
28 - 44
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