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Comparative analysis of feed forward and radial basis function neural networks for the reconstruction of noisy curves

机译:前馈和径向基函数神经网络重构噪声曲线的比较分析

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摘要

Neural networks are considered to be an important tool for interpolation and curve fitting problems. Two important neural networks- the multi-layer feed forward network and the radial basis function network (RBF) are considered for fitting of noisy curves. Comparison between the two networks is drawn on the basis of noise in the data. Performance is shown for varying levels of noise and thus the conclusions are drawn on the suitability of the two networks for the problem of reconstruction of noisy curves.
机译:神经网络被认为是解决插值和曲线拟合问题的重要工具。噪声曲线的拟合考虑了两个重要的神经网络-多层前馈网络和径向基函数网络(RBF)。根据数据中的噪声得出两个网络之间的比较。示出了针对变化的噪声水平的性能,因此得出关于两个网络对重构噪声曲线问题的适用性的结论。

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