Biomechanical surrogate modelling using stabilized vectorial greedy kernel methods

04/27/2020
by   Bernard Haasdonk, et al.
0

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 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.

READ FULL TEXT
research
07/19/2023

On the optimality of target-data-dependent kernel greedy interpolation in Sobolev Reproducing Kernel Hilbert Spaces

Kernel interpolation is a versatile tool for the approximation of functi...
research
11/11/2019

A novel class of stabilized greedy kernel approximation algorithms: Convergence, stability uniform point distribution

Kernel based methods provide a way to reconstruct potentially high-dimen...
research
07/24/2019

Kernel Methods for Surrogate Modeling

This chapter deals with kernel methods as a special class of techniques ...
research
09/29/2021

Greedy algorithms for learning via exponential-polynomial splines

Kernel-based schemes are state-of-the-art techniques for learning by dat...
research
12/30/2022

Non-intrusive surrogate modelling using sparse random features with applications in crashworthiness analysis

Efficient surrogate modelling is a key requirement for uncertainty quant...
research
11/05/2015

Sparse approximation by greedy algorithms

It is a survey on recent results in constructive sparse approximation. T...
research
02/22/2018

Proportional Volume Sampling and Approximation Algorithms for A-Optimal Design

We study the A-optimal design problem where we are given vectors v_1,......

Please sign up or login with your details

Forgot password? Click here to reset