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Multiscale Support Vector Approach for Solving Ill-Posed Problems

机译:解决不适定问题的多尺度支持向量法

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摘要

Based on the use of compactly supported radial basis functions, we extend in this paper the support vector approach to a multiscale support vector approach (MSVA) scheme for approximating the solution of a moderately ill-posed problem on bounded domain. The Vapnik's -intensive function is adopted to replace the standard loss function in using the regularization technique to reduce the error induced by noisy data. Convergence proof for the case of noise-free data is then derived under an appropriate choice of the Vapnik's cut-off parameter and the regularization parameter. For noisy data case, we demonstrate that a corresponding choice for the Vapnik's cut-off parameter gives the same order of error estimate as both the a posteriori strategy based on discrepancy principle and the noise-free a priori strategy. Numerical examples are constructed to verify the efficiency of the proposed MSVA approach and the effectiveness of the parameter choices.
机译:基于使用紧密支持的径向基函数,我们在本文中将支持向量方法扩展为一种多尺度支持向量方法(MSVA)方案,用于近似有限域上中等不适定问题的解。使用正则化技术时,采用Vapnik的-密集函数来代替标准损失函数,以减少由噪声数据引起的误差。然后,在适当选择Vapnik的截止参数和正则化参数的情况下,得出无噪声数据情况下的收敛性证明。对于嘈杂的数据情况,我们证明了Vapnik的截止参数的相应选择给出的误差估计与基于差异原理的后验策略和无噪声先验策略的误差估计顺序相同。通过数值算例验证了所提出的MSVA方法的有效性和参数选择的有效性。

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