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Feasibility study on the least square method for fitting non-Gaussian noise data

机译:拟合非高斯噪声数据的最小方形方法的可行性研究

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This study is to investigate the feasibility of least square method in fitting non-Gaussian noise data. We add different levels of the two typical non-Gaussian noises, Levy and stretched Gaussian noises, to exact value of the selected functions including linear equations, polynomial and exponential equations, and the maximum absolute and the mean square errors are calculated for the different cases. Levy and stretched Gaussian distributions have many applications in fractional and fractal calculus. It is observed that the non-Gaussian noises are less accurately fitted than the Gaussian noise, but the stretched Gaussian cases appear to perform better than the Levy noise cases. It is stressed that the least-squares method is inapplicable to the non-Gaussian noise cases when the noise level is larger than 5%. (C) 2017 Elsevier B.V. All rights reserved.
机译:该研究是探讨拟合非高斯噪声数据中最小二乘法的可行性。 我们添加了两个典型的非高斯噪声,levy和拉伸高斯噪声的不同级别,到所选功能的确切值,包括线性方程,多项式和指数方程,以及为不同情况计算的最大绝对和均方误差 。 Levy和Lasted高斯分布在分数和分形微积分中具有许多应用。 观察到非高斯噪声比高斯噪声更准确地安装,但是拉伸的高斯案例似乎比征收噪声情况更好。 强调,当噪声水平大于5%时,最小二乘法不适用于非高斯噪声情况。 (c)2017年Elsevier B.V.保留所有权利。

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