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首页> 外文期刊>Journal of Approximation Theory >Nonlinear function approximation: Computing smooth solutions with an adaptive greedy algorithm
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Nonlinear function approximation: Computing smooth solutions with an adaptive greedy algorithm

机译:非线性函数逼近:使用自适应贪婪算法计算平滑解

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摘要

In contrast to linear schemes, nonlinear approximation techniques allow for dimension independent rates of convergence. Unfortunately, typical algorithms (such as, e.g., backpropagation) are not only computationally demanding, but also unstable in the presence of data noise. While we can show stability for a weak relaxed greedy algorithm, the resulting method has the drawback that it requires in practise unavailable smoothness information about the data. In this work we propose an adaptive greedy algorithm which does not need this information but rather recovers it iteratively from the available data. We show that the generated approximations are always at least as smooth as the original function and that the algorithm also remains stable, when it is applied to noisy data. Finally, the applicability of this algorithm is demonstrated by numerical experiments. (c) 2006 Elsevier.Inc. All rights reserved.
机译:与线性方案相反,非线性逼近技术可实现尺寸无关的收敛速度。不幸的是,典型的算法(例如反向传播)不仅在计算上要求很高,而且在存在数据噪声的情况下也是不稳定的。虽然我们可以显示弱松弛贪婪算法的稳定性,但所得方法的缺点是在实践中需要有关数据的平滑信息。在这项工作中,我们提出了一种自适应贪婪算法,该算法不需要此信息,而是从可用数据中迭代地恢复它。我们表明,生成的近似值始终至少与原始函数一样平滑,并且当算法应用于嘈杂数据时,算法也保持稳定。最后,通过数值实验证明了该算法的适用性。 (c)2006年爱思唯尔公司版权所有。

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