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Biomechanical Surrogate Modelling Using Stabilized Vectorial Greedy Kernel Methods

机译:使用稳定的纵向贪婪内核方法进行生物力学替代建模

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Greedy kernel approximation algorithms are successful techniques for sparse and accurate data-based modelling and function approximation. Based on a recent idea of stabilization (Wenzel et al., A novel class of stabilized greedy kernel approximation algorithms: convergence, stability & uniform point distribution, e-prints. arXiv:1911.04352, 2019) of such algorithms in the scalar output case, we here consider the vectorial extension built on VKOGA (Wirtz and Haasdonk, Dolomites Res Notes Approx 6:83-100,2013. We introduce the so called γ-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.
机译:贪婪的内核近似算法是用于稀疏和准确的基于数据的建模和功能近似的成功技术。 基于最近的稳定思想(Wenzel等,是一种新型稳定贪婪内核近似算法:收敛,稳定性和均匀点分布,电子印刷品。arxiv:1911.04352,2019)标量输出案例中的这种算法, 我们在这里考虑在Vkoga(Wirtz和Haasdonk)上建立的矢量扩展,Dolomites Res Notes大约6:83-100,2013。我们介绍了所谓的γ-interted vkoga,评论分析性质,并从临床相关的数据评估数据评估 应用,人脊柱的建模。实验表明,新的稳定算法导致了在非稳定算法上提高了准确性和稳定性。

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