Biomechanical surrogate modelling using stabilized vectorial greedy kernel methods
Numerical Analysis
2021-05-20 v2 Machine Learning
Numerical Analysis
Abstract
Greedy kernel approximation algorithms are successful techniques for sparse and accurate data-based modelling and function approximation. Based on a recent idea of stabilization of such algorithms in the scalar output case, we here consider the vectorial extension built on VKOGA. We introduce the so called -restricted VKOGA, comment on analytical properties and present numerical evaluation on data from a clinically relevant application, the modelling of the human spine. The experiments show that the new stabilized algorithms result in improved accuracy and stability over the non-stabilized algorithms.
Keywords
Cite
@article{arxiv.2004.12670,
title = {Biomechanical surrogate modelling using stabilized vectorial greedy kernel methods},
author = {Bernard Haasdonk and Tizian Wenzel and Gabriele Santin and Syn Schmitt},
journal= {arXiv preprint arXiv:2004.12670},
year = {2021}
}