基于Theil方法的f变换在回归模型中的应用

J. Yoon, Hye-Young Jung, Seung-Hoe Choi, Woo-Joo Lee
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引用次数: 2

摘要

回归分析是用回归模型来解释解释变量与响应变量之间的统计关系的一种分析方法。本文提出了一种新的基于f变换的回归分析方法。Theil的方法在回归中的主要优点是鲁棒性,这意味着它对异常值不敏感。该方法利用f变换得到的增量率的中位数,基于所有可能的f变换数据对来估计模糊回归模型的系数。算例表明,采用基于f变换的Theil方法进行回归分析比最小二乘估计(LSE)更稳健,甚至比原Theil方法更稳健。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An application of F-transform to a regression model based on Theil's method
Regression Analysis is an analyzing method of regression model to explain the statistical relationship between explanatory variables and response variables. This paper propose a new regression analysis applying Theil's method based on F-transform. The main advantage of Theil's method in regression is the robustness, which means that it is not sensitive to outliers. The proposed method uses the median of rates of increments which are obtained from F-transform, based all possible pairs of F-transformed data in order to estimate the coefficients of fuzzy regression model. An example is given to show that the proposed regression analysis applying Theil's method based on F-transform is more robust than the least squares estimation (LSE) and even more robust than the original Theil's method.
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