Outlier Detection in Nonlinear Regression

Hossein Riazoshams, M. Habshah, M. Adam
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引用次数: 13

Abstract

The detection of outliers is very essential because of their responsibility for producing huge interpretative problem in linear as well as in nonlinear regression analysis. Much work has been accomplished on the identification of outlier in linear regression, but not in nonlinear regression. In this article we propose several outlier detection techniques for nonlinear regression. The main idea is to use the linear approximation of a nonlinear model and consider the gradient as the design matrix. Subsequently, the detection techniques are formulated. Six detection measures are developed that combined with three estimation techniques such as the Least-Squares, M and MM-estimators. The study shows that among the six measures, only the studentized residual and Cook Distance which combined with the MM estimator, consistently capable of identifying the correct outliers. Keywords—Nonlinear Regression, outliers, Gradient, Least Square, M-estimate, MM-estimate.
非线性回归中的离群值检测
异常值的检测是非常重要的,因为它们在线性和非线性回归分析中会产生巨大的解释问题。在线性回归中异常值的识别方面已经做了很多工作,但在非线性回归中还没有。在本文中,我们提出了几种非线性回归的离群值检测技术。主要思想是使用非线性模型的线性逼近,并考虑梯度作为设计矩阵。随后,制定了检测技术。结合最小二乘估计、M估计和mm估计等三种估计技术,提出了六种检测方法。研究表明,在6个测度中,只有学生化残差和库克距离与MM估计量相结合,能够一致地识别出正确的离群值。关键词:非线性回归,异常值,梯度,最小二乘,m -估计,mm -估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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